Example-based object detection in images by components

IEEE Transactions on Pattern Analysis and Machine Intelligence(2001)

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摘要
In this paper, we present a general example-based framework for detecting objects in static images by components. The technique is demonstrated by developing a system that locates people in cluttered scenes. The system is structured with four distinct example-based detectors that are trained to separately find the four components of the human body: the head, legs, left arm, and right arm. After ensuring that these components are present in the proper geometric configuration, a second example-based classifier combines the results of the component detectors to classify a pattern as either a 驴person驴 or a 驴nonperson.驴 We call this type of hierarchical architecture, in which learning occurs at multiple stages, an Adaptive Combination of Classifiers (ACC). We present results that show that this system performs significantly better than a similar full-body person detector. This suggests that the improvement in performance is due to the component-based approach and the ACC data classification architecture. The algorithm is also more robust than the full-body person detection method in that it is capable of locating partially occluded views of people and people whose body parts have little contrast with the background.
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关键词
learning (artificial intelligence),object detection,pattern classification,adaptive combination of classifiers,cluttered scenes,component-based approach,data classification architecture,example-based classifier,example-based detectors,example-based object detection,head,left arm,legs,proper geometric configuration,right arm,static images
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