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Guided Attention Network for Object Detection and Counting on Drones

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arxiv 1909.11307 v1 pith:JMNLI3CT submitted 2019-09-25 cs.CV

Guided Attention Network for Object Detection and Counting on Drones

classification cs.CV
keywords attentioncountingdetectionobjectbackgroundfeaturechallengingdifferent
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Object detection and counting are related but challenging problems, especially for drone based scenes with small objects and cluttered background. In this paper, we propose a new Guided Attention Network (GANet) to deal with both object detection and counting tasks based on the feature pyramid. Different from the previous methods relying on unsupervised attention modules, we fuse different scales of feature maps by using the proposed weakly-supervised Background Attention (BA) between the background and objects for more semantic feature representation. Then, the Foreground Attention (FA) module is developed to consider both global and local appearance of the object to facilitate accurate localization. Moreover, the new data argumentation strategy is designed to train a robust model in various complex scenes. Extensive experiments on three challenging benchmarks (i.e., UAVDT, CARPK and PUCPR+) show the state-of-the-art detection and counting performance of the proposed method compared with existing methods.

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