1 December 2011 REBoost: probabilistic resampling for boosted pedestrian detection
Shiming Lai, Maojun Zhang, Yu Liu, Barry-John Theobald
Author Affiliations +
Abstract
Cascaded object detectors have demonstrated great success in fast object detection, where image regions can quickly be rejected using a cascade of increasingly complex rejectors/detectors. Although such cascaded detectors typically are fast and require minimal computation, they usually require iterative training, where classifiers are retrained to optimize rejection thresholds after testing on a validation set. We propose a cascaded object detector that uses probabilistic resampling for boosting reweighting, which has the advantage that only a single training step is required. Decision thresholds can be tuned on a validation set without the need for classifier retraining. Empirical results on a pedestrian detection task demonstrate that this reweighting results in a strong classifier that quickly rejects image regions and offers higher accuracy than other competing approaches.
©(2011) Society of Photo-Optical Instrumentation Engineers (SPIE)
Shiming Lai, Maojun Zhang, Yu Liu, and Barry-John Theobald "REBoost: probabilistic resampling for boosted pedestrian detection," Optical Engineering 50(12), 127203 (1 December 2011). https://doi.org/10.1117/1.3658762
Published: 1 December 2011
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CITATIONS
Cited by 1 scholarly publication.
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KEYWORDS
Sensors

Detection and tracking algorithms

Optical engineering

Computing systems

Statistical analysis

Defense technologies

Image fusion

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