TR2010-075

Scene-Adaptive Human Detection with Incremental Active Learning


Abstract:

In many computer vision tasks, scene changes hinder the generalization ability of trained classifiers. For instance, a human detector trained with one set of images is unlikely to perform well in different scene conditions. In this paper, we propose an incremental learning method for human detection that can take generic training data and build a new classifier adapted to the new deployment scene. Two operation modes are proposed: i) a completely autonomous mode wherein first few empty frames of video are used for adaptation, and ii) an active learning approach with user in the loop, for more challenging scenarios including situations where empty initialization frames may not exist. Results show the strength of the proposed methods for quick adaptation.

 

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    •  NEWS    ICPR 2010: 2 publications by MERL researchers and others
      Date: August 23, 2010
      Where: IEEE International Conference on Pattern Recognition (ICPR)
      Brief
      • The papers "Scene-Adaptive Human Detection with Incremental Active Learning" by Joshi, A.J. and Porikli, F. and "Human State Classification and Predication for Critical Care Monitoring by Real-Time Bio-signal Analysis" by Li, X. and Porikli, F. were presented at the IEEE International Conference on Pattern Recognition (ICPR).
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