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Pedestrian Detection by Exemplar-Guided Contrastive Learning

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arxiv 2111.08974 v3 pith:55GO25QH submitted 2021-11-17 cs.CV

Pedestrian Detection by Exemplar-Guided Contrastive Learning

classification cs.CV
keywords pedestrianlearningcontrastivepedestriansdifferentappearancedetectiondictionary
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Typical methods for pedestrian detection focus on either tackling mutual occlusions between crowded pedestrians, or dealing with the various scales of pedestrians. Detecting pedestrians with substantial appearance diversities such as different pedestrian silhouettes, different viewpoints or different dressing, remains a crucial challenge. Instead of learning each of these diverse pedestrian appearance features individually as most existing methods do, we propose to perform contrastive learning to guide the feature learning in such a way that the semantic distance between pedestrians with different appearances in the learned feature space is minimized to eliminate the appearance diversities, whilst the distance between pedestrians and background is maximized. To facilitate the efficiency and effectiveness of contrastive learning, we construct an exemplar dictionary with representative pedestrian appearances as prior knowledge to construct effective contrastive training pairs and thus guide contrastive learning. Besides, the constructed exemplar dictionary is further leveraged to evaluate the quality of pedestrian proposals during inference by measuring the semantic distance between the proposal and the exemplar dictionary. Extensive experiments on both daytime and nighttime pedestrian detection validate the effectiveness of the proposed method.

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