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A novel multiplex cascade classifier for pedestrian detection
Authors:Hong Tian  Zhu Duan  Ajith Abraham  Hongbo Liu
Affiliation:1. Institute of Software, Dalian Jiaotong University, 116028 Dalian, China;2. School of Information, Dalian Maritime University, 116026 Dalian, China;3. Machine Intelligence Research Labs, Scientific Network for Innovation and Research Excellence, Auburn, WA 98071, USA;4. Institute for Neural Computation, University of California San Diego, La Jolla, CA 92093, USA
Abstract:
Reliable pedestrian detection is of great importance in visual surveillance. In this paper, we propose a novel multiplex classifier model, which is composed of two multiplex cascades parts: Haar-like cascade classifier and shapelet cascade classifier. The Haar-like cascade classifier filters out most of irrelevant image background, while the shapelet cascade classifier detects intensively head-shoulder features. The weighted linear regression model is introduced to train its weak classifiers. We also introduce a structure table to label the foreground pixels by means of background differences. The experimental results illustrate that our classifier model provides satisfying detection accuracy. In particular, our detection approach can also perform well for low resolution and relatively complicated backgrounds.
Keywords:Pedestrian detection   AdaBoost   Haar-like feature   Shapelet feature   Weighted linear regression model
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