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Proceedings Volume 7869, including the Title Page, Copyright
information, Table of Contents, and the Conference Committee listing.
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Stylometry in visual art-the mathematical description of artists' styles - has been based on a number of properties
of works, such as color, brush stroke shape, visual texture, and measures of contours' curvatures. We
introduce the concept of quantitative measures of lighting, such as statistical descriptions of spatial coherence,
diuseness, and so forth, as properties of artistic style. Some artists of the high Renaissance, such as Leonardo,
worked from nature and strove to render illumination "faithfully" photorealists, such as Richard Estes, worked
from photographs and duplicated the "physics based" lighting accurately. As such, each had dierent motivations,
methodologies, stagings, and "accuracies" in rendering lighting clues. Perceptual studies show that
observers are poor judges of properties of lighting in photographs such as consistency (and thus by extension
in paintings as well); computer methods such as rigorous cast-shadow analysis, occluding-contour analysis and
spherical harmonic based estimation of light fields can be quite accurate. For this reasons, computer lighting
analysis can provide a new tools for art historical studies. We review lighting analysis in paintings such as
Vermeer's Girl with a pearl earring, de la Tour's Christ in the carpenter's studio, Caravaggio's Magdalen with
the smoking flame and Calling of St. Matthew) and extend our corpus to works where lighting coherence is of
interest to art historians, such as Caravaggio's Adoration of the Shepherds or Nativity (1609) in the Capuchin
church of Santa Maria degli Angeli. Our measure of lighting coherence may help reveal the working methods of
some artists and in diachronic studies of individual artists. We speculate on artists and art historical questions
that may ultimately profit from future renements to these new computational tools.
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The study of the visual art of printmaking is fundamental for art history. Printmaking methods have been used for centuries
to replicate visual art works, which have influenced generations of artists. Particularly in this work, we are interested in the
influence of prints on artistic tile panel painters, who have produced an impressive body of work in Portugal. The study of
such panels has gained interest by art historians, who try to understand the influence of prints on tile panels artists in order
to understand the evolution of this type of visual arts. Several databases of digitized art images have been used for such
end, but the use of these databases relies on manual image annotations, an effective internal organization, and an ability
of the art historian to visually recognize relevant prints. We propose an automation of these tasks using statistical pattern
recognition techniques that takes into account not only the manual annotations available, but also the visual characteristics
of the images. Specifically, we introduce a new network link-analysis method for the automatic annotation and retrieval
of digital images of prints. Using a database of 307 annotated images of prints, we show that the annotation and retrieval
results produced by our approach are better than the results of state-of-the-art content-based image retrieval methods.
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Painted tile panels (Azulejos) are one of the most representative Portuguese forms of art. Most of these panels
are inspired on, and sometimes are literal copies of, famous paintings, or prints of those paintings. In order
to study the Azulejos, art historians need to trace these roots. To do that they manually search art image
databases, looking for images similar to the representation on the tile panel. This is an overwhelming task that
should be automated as much as possible. Among several cues, the pose of humans and the general composition
of people in a scene is quite discriminative. We build an image descriptor, combining the kinematic chain of each
character, and contextual information about their composition, in the scene. Given a query image, our system
computes its similarity profile over the database. Using nearest neighbors in the space of the descriptors, the
proposed system retrieves the prints that most likely inspired the tiles' work.
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The aim of image understanding, which is a long standing goal of computer vision, is to develop algorithms
with which computers can advance to the semantic content of images. One ability of such algorithms would
be the automatic discovery of relations between different objects in large collections of images. To analyze this
relatedness we present an unsupervised and a semi-supervised approach for decomposing the large intra-class
variability of object categories. The relations between objects is discovered by mapping all exemplars into a
single low-dimensional projection that preserves the structure that is inherent to the category. The analysis
reveals subtypes and an automatic classification algorithm is presented that predicts the artistic workshop that
has drawn the objects. Finally, an approach for ordering the instances of an object category is proposed that also
shows transitions between object instances. Our work is based on late medieval manuscripts from the Codices
Palatini germanici.
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For many years, a lot of museums and countries organize the high definition digitalization of their own collections.
In consequence, they generate massive data for each object. In this paper, we only focus on art painting
collections. Nevertheless, we faced a very large database with heterogeneous data. Indeed, image collection
includes very old and recent scans of negative photos, digital photos, multi and hyper spectral acquisitions,
X-ray acquisition, and also front, back and lateral photos. Moreover, we have noted that art paintings suffer
from much degradation: crack, softening, artifact, human damages and, overtime corruption. Considering
that, it appears necessary to develop specific approaches and methods dedicated to digital art painting analysis.
Consequently, this paper presents a complete framework to evaluate, compare and benchmark devoted to
image processing algorithms.
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Our paper addresses problem of multi-modal data acquisition and the following data visualization for art analysis
and interpretation. Various types of modalities for acquisition of digital images are used for art analysis. The
data we can obtain using various modalities differ in two ways. The acquired images can differ by their mutual
geometry and possibly by their radiometric quality. These are the differences we would like to remove. The
group of differences we are interested in are details or characteristics of an artwork, which are apparent just in
the certain modality and which bring us new information. The two listed groups represent two categories of
image processing methods we have to deal with. The first one is represented by image preprocessing methods
such as data enhancement and restoration algorithms, the second class includes effective ways how to combine
the acquired information into one image - image fusion. In our paper we present image quality enhancement for
microscopic multi-modal data and their segmentation and recent results in data fusion and visualization for art
analysis are demonstrated from the second category of methods.
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During his explorations of Africa, David Livingstone kept a diary and wrote letters about his experiences. Near the end
of his travels, he ran out of paper and ink and began recording his thoughts on leftover newspaper with ink made from
local seeds. These writings suffer from fading, from interference with the printed text and from bleed through of the
handwriting on the other side of the paper, making them hard to read. New image processing techniques have been
developed to deal with these papers to make Livingstone's handwriting available to the scholars to read.
A scan of the David Livingstone's papers was made using a twelve-wavelength, multispectral imaging system. The
wavelengths ranged from the ultraviolet to the near infrared. In these wavelengths, the three different types of writing
behave differently, making them distinguishable from each other. So far, three methods have been used to recover
Livingstone's handwriting. These include pseudocolor (to make the different writings distinguishable), spectral band
ratios (to remove text that does not change), and principal components analysis (to separate the different writings). In
initial trials, these techniques have been able to lift handwriting off printed text and have suppressed handwriting that has
bled through from the other side of the paper.
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This paper addresses the problem of automating analyses of historical maps. The problem is motivated by the lack of
accuracy and consistency in the current comparison process of geographical objects found in historical maps by visual
inspections. The objective of our work is to compare shape characteristics of the Great Lakes region in a dataset of
approximately 40 French and British historical maps created in the 17th through the 19th centuries. Our approach
decomposes the visual inspection into steps such as object segmentation, spatial scale calibration, extraction of calibrated
object descriptors and comparison of descriptors over time and multiple cartographer houses. The automation of object
segmentation is achieved by template shape-based segmentation using the Hu moments as shape descriptors and ball-based
region growing. The automation of spatial calibration is accomplished by detection and classification of lines
along map borders and by mapping striped boundaries intersected by latitude and longitude lines into degrees of arc
length. Thus, shape characteristics of segmentation results in pixels can be converted to geographical units, for example,
an area of a lake in square miles. We report experimental evaluations of automation accuracy based on comparison with
manual segmentation results, as well as the knowledge obtained from the area comparisons.
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This paper shows the simulations of the usage of a LED cluster as the illumination source for a multispectral imaging
system covering the range of wavelengths from 350 to 1650 nm. The system can be described as being composed of two
modules determined by the spectral range of the imaging sensors responses, one of them covering the range from 350-
950nm (CCD camera) and the other one covering the wavelengths from 900-1650nm (InGaAs camera). A well known
method of reflectance estimation, the pseudo-inverse method, jointly with the experimentally measured data of the
spectral responses of the cameras and the spectral emission of the LED elements are used for the simulations. The
performance of the system for spectral estimation under ideal conditions and realistic noise influence is evaluated
through different spectral and colorimetric metrics like the GFC, RMS error and CIEDE2000 color difference formula.
The results show that is expectable a rather good performance of the real setup. However, they also reveal a difference in
the performances of the modules. The second module has poorer performance due to the less narrow spectral emission
and less number of LED elements that covers the near-infrared spectral range.
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As high-resolution images of paintings, acquired using various imaging modalities (e.g. X-ray, luminescence, visible and
infrared reflection) become more available, it is increasingly useful to have accurate registration between them. Accurate
registration allows new information to be compiled from the several multimodal images. This leads to a better
understanding of how the painting was constructed and of any compositional changes that have occurred. To that end,
we have produced an automatic image registration algorithm that is capable of aligning X-ray, color, and infrared
images, as well as multispectral luminescence and reflectance image sets, or cubes. The key steps of the algorithm
include identifying large sets of candidate control points in the reference image, then pairing them with potential points
in a second image using cross-correlation. Finally, after selecting the best set of control point pairs, the second image is
transformed to be in register with the reference image. Tests show the algorithm to be capable of achieving sub-pixel
registration across these various image modalities.
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Currently, a lot of different 3D scanning devices are used for 3D acquisition of art artifact surface shape and color. Each
of them has different technical parameters starting from measurement principle (structured light, laser triangulation,
interferometry, holography) and ending on parameters like measurement volume size, spatial resolution and precision of
output data and color information. Some of the 3D scanners can grab additional information like surface normal vectors,
BRDF distribution, multispectral color. In this paper, the problem of establishing of threshold for technical parameters of
3D scanning process as a function of required information about the object is discussed. Only two main technical
parameters are under consideration, in order to cover as many different 3D scanning devices as possible - measurement
sampling density (MSD - represented by number of points per square millimeter) and measurement uncertainty (MU - directly influencing final data accuracy). Also different materials and finishing techniques require different thresholds of MSD and MU parameters to collect similar documentation (for example documentation of object state for art conservation department) of different objects. In this paper we consider exemplary painting on canvas, wallpainting, graphics prints and stone samples to visualize what object features can be observed within different values of MSD and MU parameters.
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Pigment degradation has been a subject of interest among researchers in the field of cultural heritage studies. Knowing
how pigments behave when subjected to different elements such as high temperature, humidity, electromagnetic
radiation and many more others is of prime importance. In this study, the effects of subjecting Japanese pigments to
high temperature were investigated. Focus was given on the effects in terms of pigment discoloration and the
micromechanism of degradation. Multispectral images were used to track the changes in color and spectral reflectance
by reconstructing colorimetric and spectral information from the images. The multispectral images were taken using a
high-resolution flat-bed scanner equipped with a line-CMOS camera. In addition, the pigments were characterized using
commercially available spectrometers, X-ray diffraction, X-ray fluorescence spectroscopy and X-ray absorption fine
structure were used to ascertain the influence of high temperature exposure of the pigments. The high resolution
multispectral scans gave the most valuable insights into the discoloration and micromechanism of pigment degradation
since they provide both analytical and visual information.
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We derive and demonstrate new methods for dewarping images depicted in convex mirrors in artwork and
for estimating the three-dimensional shapes of the mirrors themselves. Previous methods were based on the
assumption that mirrors were spherical or paraboloidal, an assumption unlikely to hold for hand-blown glass
spheres used in early Renaissance art, such as Johannes van Eyck's Portrait of Giovanni (?) Arnolfini and his
wife (1434) and Robert Campin's Portrait of St. John the Baptist and Heinrich von Werl (1438). Our methods
are more general than such previous methods in that we assume merely that the mirror is radially symmetric
and that there are straight lines (or colinear points) in the actual source scene. We express the mirror's shape
as a mathematical series and pose the image dewarping task as that of estimating the coefficients in the series
expansion. Central to our method is the plumbline principle: that the optimal coefficients are those that dewarp
the mirror image so as to straighten lines that correspond to straight lines in the source scene. We solve for
these coefficients algebraically through principal component analysis, PCA. Our method relies on a global figure
of merit to balance warping errors throughout the image and it thereby reduces a reliance on the somewhat
subjective criterion used in earlier methods. Our estimation can be applied to separate image annuli, which is
appropriate if the mirror shape is irregular. Once we have found the optimal image dewarping, we compute
the mirror shape by solving a differential equation based on the estimated dewarping function. We demonstrate
our methods on the Arnolfini mirror and reveal a dewarped image superior to those found in prior work|an
image noticeably more rectilinear throughout and having a more coherent geometrical perspective and vanishing
points. Moreover, we find the mirror deviated from spherical and paraboloidal shape; this implies that it would
have been useless as a concave projection mirror, as has been claimed. Our dewarped image can be compared to
the geometry in the full Arnolfini painting; the geometrical agreement strongly suggests that van Eyck worked
from an actual room, not, as has been suggested by some art historians, a "fictive" room of his imagination. We
apply our method to other mirrors depicted in art, such as Parmigianino's Self-portrait in a convex mirror and
compare our results to those from earlier computer graphics simulations.
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Time and order are considered crucial information in the art domain, and subject of many research efforts by historians.
In this paper, we present a framework for estimating the ordering and date information of paintings and drawings. We formulate this problem as the embedding into a one dimension manifold, which aims to place paintings far or close to each other according to a measure of similarity. Our formulation can be seen as a manifold learning algorithm, albeit properly adapted to deal with existing questions in the art community.
To solve this problem, we propose an approach based in Laplacian Eigenmaps and a convex optimization formulation. Both methods are able to incorporate art expertise as priors to the estimation, in the form of constraints.
Types of information include exact or approximate dating and partial orderings. We explore the use of soft penalty terms to allow for constraint violation to account for the fact that prior knowledge may contain small errors.
Our problem is tested within the scope of the PrintART project, which aims to assist art historians in tracing Portuguese Tile art "Azulejos" back to the engravings that inspired them.
Furthermore, we describe other possible applications where time information (and hence, this method) could be of use in art history, fake detection or curatorial treatment.
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Early attempts at authentication Jackson Pollock's drip paintings based on computer image analysis were restricted
to a single "fractal" or "multi-fractal" visual feature, and achieved classification nearly indistinguishable
from chance. Irfan and Stork pointed out that such Pollock authentication is an instance of visual texture recognition, a large discipline that universally relies on multiple visual features, and showed that modest, but statistically
significant improvement in recognition accuracy can be achieved through the use of multiple features. Our work
here extends such multi-feature classification by training on more image data and images of higher resolution
of both genuine Pollocks and fakes. We exploit methods for feature extraction, feature selection and classiffier
techniques commonly used in pattern recognition research including Support Vector Machines (SVM), decision
trees (DT), and AdaBoost. We extract features from the fractality, multifractality, pink noise patterns, topological
genus, and curvature properties of the images of candidate paintings, and address learning issues that have
arisen due to the small number of examples. In our experiments, we found that the unmodified classiffiers like
Support Vector Machines or Decision Tree alone give low accuracies (60%), but that statistical boosting through
AdaBoost leads to accuracies of nearly 75%. Thus, although our set of observations is very small, we conclude
that boosting methods can improve the accuracy of multi-feature classiffication of Pollock's drip paintings.
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Underdrawings and pentimenti-typically revealed through x-ray imaging and infrared reflectography-comprise important evidence about the intermediate states of an artwork and thus the working methods of its creator.1 To this end, Shahram, Stork and Donoho introduced the De-pict algorithm, which recovers layers of brush strokes in paintings with open brush work where several layers are partially visible, such as in van Gogh's Self portrait
with a grey felt hat.2 While that preliminary work served as a proof of concept that computer image analytic
methods could recover some occluded brush strokes, the work needed further refinement before it could be a
tool for art scholars. Our current work makes several steps to improve that algorithm. Specifically, we refine
the inpainting step through the inclusion of curvature-based constraints, in which a mathematical curvature
penalty biases the reconstruction toward matching the artist's smooth hand motion. We refine and test our
methods using "ground truth" image data: passages of four layers of brush strokes in which the intermediate
layers were recorded photographically. At each successive top layer (currently identified by the user), we used k-means clustering combined with graph cuts to obtain chromatically and spatially coherent segmentation of brush strokes. We then reconstructed strokes at the deeper layer with our new curvature-based inpainting algorithm
based on chromatic level lines. Our methods are clearly superior to previous versions of the De-pict algorithm
on van Gogh's works giving smoother, natural strokes that more closely match the shapes of unoccluded strokes.
Our improved method might be applied to the classic drip paintings of Jackson Pollock, where the drip work is
more open and the physics of splashing paint ensures that the curvature more uniform than in the brush strokes of van Gogh.
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We examine one class of evidence put forth in support of the recent claim that the Italian Baroque master
Caravaggio secretly employed optical projectors as a direct drawing aid. Specically, we test the claims that there
is an "abnormal number" of left-handed gures in his works and, more specically, that "During the Del Monte
period he had too many left-handed models." We also test whether there was a reversal in the handedness of
specic models in different paintings. Such evidence would be consistent with the claim that Caravaggio switched
between using a convex-lens projector to using a concave-mirror projector and would support, but not prove,
the claim that Caravaggio used optical projections. We estimate the parity (+ or -) of each of Caravaggio's 76
appropriate oil paintings based on the handedness of gures, the orientation of asymmetric objects, placement of
scabbards, depicted text, and so on, and search for statistically significant changes in handedness in figures. We
also track the direction of the illumination over time in the artist's uvre. We discuss some historical evidence
as it relates to the question of his possible use of optics. We nd the proportion of left-handed figures lower than
that in the general population (not higher), and no significant change in estimated handedness even of individual
models. Optical proponents have argued that Bacchus (1597) portrays a left-handed gure, but we give visual
and cultural evidence showing that this gure is instead right-handed, thereby rebutting this claim that the
painting was executed using optical projections. Moreover, scholars recently re-discovered the image of the artist
with easel and canvas reflected in the carafe of wine at the front left in the tableau in Bacchus, showing that
this painting was almost surely executed using traditional (non-optical) easel methods. We conclude that there
is 1) no statistically signicant abnormally high number of left-handed gures in Caravaggio's uvre, including
during any limited working period, 2) no statistically significant change in handedness among all gures or even
individual gures that might be consistent with a change in optical projector, and 3) the visual and cultural
evidence in Bacchus shows the gure was right-handed and that the artist executed this work by traditional
(non-optical) easel methods. We conclude that the general parity and handedness evidence does not support the
claim that Caravaggio employed optical projections.
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David Hockney has argued that the right hand of the disciple, thrust to the rear in Caravaggio's Supper at Emmaus (1606), is anomalously large as a result of the artist refocusing a putative secret lens-based optical projector and tracing the image it projected onto his canvas. We show through rigorous optical analysis that to achieve such an anomalously large hand image, Caravaggio would have needed to make extremely large, conspicuous and implausible alterations to his studio setup, moving both his purported lens and his canvas nearly two meters between "exposing" the disciple's left hand and then his right hand. Such major disruptions to his studio would have impeded -not aided- Caravaggio in his work. Our optical analysis quantifies these
problems and our computer graphics reconstruction of Caravaggio's studio illustrates these problems. In this
way we conclude that Caravaggio did not use optical projections in the way claimed by Hockney, but instead most likely set the sizes of these hands "by eye" for artistic reasons.
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Underdrawings and pentimenti reveal intermediate states of a painting and thus may shed light on the working
methods of some artists. It has been claimed that Lorenzo Lotto used optical projections during the execution
of Husband and wife (1543) and, recently, that underdrawings in that work might reveal evidence of tracing
of optical projections. We analyze x-ray images of this painting-captured under careful, museum-laboratory
conditions and enhanced through digital image processing-with special attention to the possibility of evidence
of the use of optical projections in the central passage of the depicted carpet. We also study the work in situ and
in high-resolution macro optical images of the central portion of the carpet pattern. These photographs reveal
that the top portion of the keyhole pattern is not "blurry, like an out-of-focus image," but instead was merely
executed in a somewhat broader brush than was neighboring passages. Furthermore, x-ray, infra-red and visible
light inspection show that the white portions and black contours were executed atop a broad layer of dark red and
reveal no record of an optical projection would have been present when Lotto executed the visible portion. As
such, an evidence of putative underdrawings in this region has no bearing on the optical projection claim. There
is no evidence of tracing marks-in charcoal or in any medium-in the top, visible portion of this passage either.
As such, this visual, infra-red and x-ray evidence does not support the claim that this painting was executed
under optical projections. We also discuss the difficulties with the projection theory with special reference to
Lotto's preparatory drawing in the Rijksmuseum-specifically the need for a needlessly complex optical system
(two lenses rather than one). We also review briefly contemporary textual evidence in early 16th-century Venice
that has been used to support the optical projection claim for Lotto and conclude that it also fails to support
the projection claim for this painting.
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This work addresses the problem of automatic classification and labeling of 19th- and 20th-century quilts from
photographs. The photographs are classified according to the quilt patterns into crazy and non - crazy categories. Based
on the classification labels, humanists try to understand the distinct characteristics of an individual quilt-maker or
relevant quilt-making groups in terms of their choices of pattern selection, color choices, layout, and original deviations
from traditional patterns. While manual assignment of crazy and non-crazy labels can be achieved by visual inspection,
there does not currently exist a clear definition of the level of crazy-ness, nor an automated method for classifying
patterns as crazy and non-crazy.
We approach the problem by modeling the level of crazy-ness by the distribution of clusters of color-homogeneous
connected image segments of similar shapes. First, we extract signatures (a set of features) of quilt images that represent
our model of crazy-ness. Next, we use a supervised classification method, such as the Support Vector Machine (SVM)
with the radial basis function, to train and test the SVM model. Finally, the SVM model is optimized using N-fold cross
validation and the classification accuracy is reported over a set of 39 quilt images.
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Numerous cultural heritage art works have shiny surfaces resulting form gold, silver, and other metallic pigments. In
addition varnish overlayer on oil paintings makes it challenging to retrieve true color information. This is due to the
great effect of lighting condition when images are acquired and viewed. The reflection of light from such surfaces is a
combination of the surface's specular and diffused light reflections. In this paper, this specific problems encountered
when digitizing cultural heritage were discussed. Experimental results using the images acquired with a high-resolution
large flat bed scanner, together with a mathematical method for processing the captured images were presented and
discussed in detail. Focus was given in separating the diffused and specular components of the reflected light for the
purpose of analytical imaging. The mathematical algorithm developed in this study enables imaging of cultural
heritage with shiny and glossy surfaces effectively and efficiently.
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Completely non-invasive digital cleaning of Fernando Amorsolo's 1948 oil on canvas, Malacañang by the River, is
implemented using a trained neural network. The digital cleaning process results to more vivid colors and a higher
luminosity for the digitally-cleaned painting. We propose three methods for visualizing the color change that occurred to a
painting image after digital cleaning. For the first two visualizations, the color change between original and digitally-cleaned
image is computed as a vector difference in RGB space. For the first visualization, the vector difference is projected on a
neutral color and rendered for the whole image. The second visualization renders the color change as a translucent dirt layer
that can be superimposed on a white image or on the digitally-cleaned image. For the third visualization, we model the color
change as a dirt layer that acts as a filter on the painting image. The resulting color change and dirt layer visualizations are
consistent with the actual perceived color change and could offer valuable insights to a painting's color changing process due
to exposure.
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