Abstract
Abstract—In recent years accurate algorithms for detecting
objects in images have been developed. Among these algorithms,
the object detection scheme proposed by Viola and Jones gained
great popularity, especially after the release of high-quality face
classifiers by the OpenCV group. However, as any other slidingwindow
based object detector, it is affected by a strong increase in
the computational cost as the size of the scene grows. Especially
in real-time applications, a search strategy based on a sliding
window can be computationally too expensive. In this paper,
we propose an efficient approach to adapt at run time the
sliding window step size in order to speed-up the detection
task without compromising the accuracy. We demonstrate the
effectiveness of the proposed Run-time Adaptive Sliding Window
(RASW) in improving the performance of Viola-Jones object
detection by providing better throughput-accuracy tradeoffs.
When comparing our approach with the OpenCV face detection
implementation, we obtain up to 2.03x speedup in frames per
second without any loss in accuracy.
Original language | English |
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Title of host publication | Proceedings of the 7th ACM/IEEE International Conference on Distributed Smart Cameras, (ICDSC2013) 29 October-1 november 2013, Palm Springs, USA |
Place of Publication | Los Alamitos |
Publisher | Institute of Electrical and Electronics Engineers |
Publication status | Published - 2013 |
Event | conference; ICDSC 2013; 2013-10-29; 2013-11-01 - Duration: 29 Oct 2013 → 1 Nov 2013 |
Conference
Conference | conference; ICDSC 2013; 2013-10-29; 2013-11-01 |
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Period | 29/10/13 → 1/11/13 |
Other | ICDSC 2013 |