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Viewpoint Adaptation for Rigid Object Detection

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arxiv 1702.07451 v1 pith:Y7XBTFJB submitted 2017-02-24 cs.CV

Viewpoint Adaptation for Rigid Object Detection

classification cs.CV
keywords detectionviewpointobjectpersontrainedviewpointsadaptationalgorithm
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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An object detector performs suboptimally when applied to image data taken from a viewpoint different from the one with which it was trained. In this paper, we present a viewpoint adaptation algorithm that allows a trained single-view object detector to be adapted to a new, distinct viewpoint. We first illustrate how a feature space transformation can be inferred from a known homography between the source and target viewpoints. Second, we show that a variety of trained classifiers can be modified to behave as if that transformation were applied to each testing instance. The proposed algorithm is evaluated on a person detection task using images from the PETS 2007 and CAVIAR datasets, as well as from a new synthetic multi-view person detection dataset. It yields substantial performance improvements when adapting single-view person detectors to new viewpoints, and simultaneously reduces computational complexity. This work has the potential to improve detection performance for cameras viewing objects from arbitrary viewpoints, while simplifying data collection and feature extraction.

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