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Auto-zooming CNN-based framework for real-time pedestrian detection in outdoor surveillance videos

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journal contribution
posted on 2019-01-01, 00:00 authored by S Alfasly, B Liu, Y Hu, Y Wang, Chang-Tsun LiChang-Tsun Li
© 2013 IEEE. One of the challenges faced by surveillance video analysis is to detect objects from the frames. For outdoor surveillance, detection of small object like pedestrian is of particular interest. This paper proposes a fast, lightweight, and auto-zooming-based framework for small pedestrian detection. An attentive virtual auto-zooming scheme is proposed to adaptively zoom-in the input frame by splitting it into non-overlapped tiles and pay attention to the only important tiles. Without sacrificing detection performance, we have obtained a fully convolutional pedestrian detection model which can be run on low computational resources. It has been trained on an outdoor surveillance dataset and evaluated on two specially prepared testing sets of small (far) pedestrians in outdoor surveillance. We have compared our framework performance with different single-step customized pedestrian detectors as well as the two-step detector faster R-CNN. The results validate the efficiency of our framework.

History

Journal

IEEE access

Volume

7

Pagination

105816 - 105826

Publisher

IEEE

Location

Piscataway, N.J.

ISSN

2169-3536

eISSN

2169-3536

Language

eng

Publication classification

C1 Refereed article in a scholarly journal

Copyright notice

2019, IEEE