17 July 2012 Pair normalized channel feature and statistics-based learning for high-performance pedestrian detection
Bobo Zeng, Guijin Wang, Zhiwei Ruan, Xinggang Lin, Long Meng
Author Affiliations +
Abstract
High-performance pedestrian detection with good accuracy and fast speed is an important yet challenging task in computer vision. We design a novel feature named pair normalized channel feature (PNCF), which simultaneously combines and normalizes two channel features in image channels, achieving a highly discriminative power and computational efficiency. PNCF applies to both gradient channels and color channels so that shape and appearance information are described and integrated in the same feature. To efficiently explore the formidably large PNCF feature space, we propose a statistics-based feature learning method to select a small number of potentially discriminative candidate features, which are fed into the boosting algorithm. In addition, channel compression and a hybrid pyramid are employed to speed up the multiscale detection. Experiments illustrate the effectiveness of PNCF and its learning method. Our proposed detector outperforms the state-of-the-art on several benchmark datasets in both detection accuracy and efficiency.
© 2012 Society of Photo-Optical Instrumentation Engineers (SPIE) 0091-3286/2012/$25.00 © 2012 SPIE
Bobo Zeng, Guijin Wang, Zhiwei Ruan, Xinggang Lin, and Long Meng "Pair normalized channel feature and statistics-based learning for high-performance pedestrian detection," Optical Engineering 51(7), 077206 (17 July 2012). https://doi.org/10.1117/1.OE.51.7.077206
Published: 17 July 2012
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CITATIONS
Cited by 2 scholarly publications.
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KEYWORDS
Sensors

Feature selection

Feature extraction

Optical engineering

Error analysis

RGB color model

Image compression

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