Deep cross-domain flying object classification for robust UAV detection

2017 14th IEEE International Conference on Advanced Video and Signal Based Surveillance (AVSS)(2017)

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摘要
Recent progress in the development of unmanned aerial vehicles (UAVs) causes serious safety issues for mass events and safety-sensitive locations like prisons or airports. To address these concerns, robust UAV detection systems are required. In this work, we propose an UAV detection framework based on video images. Depending on whether the video images are recorded by static cameras or moving cameras, we initially detect regions that are likely to contain an object by median background subtraction or a deep learning based object proposal method, respectively. Then, the detected regions are classified into UAV or distractors, such as birds, by applying a convolutional neural network (CNN) classifier. To train this classifier, we use our own dataset comprised of crawled and self-acquired drone images, as well as bird images from a publicly available dataset. We show that, even across a significant domain gap, the resulting classifier can successfully identify UAVs in our target dataset. We evaluate our UAV detection framework on six challenging video sequences that contain UAVs at different distances as well as birds and background motion.
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关键词
unmanned aerial vehicles,UAVs,safety-sensitive locations,robust UAV detection systems,UAV detection framework,video images,static cameras,deep cross-domain flying object classification,bird images,drone images,convolutional neural network classifier,detected regions,deep learning based object proposal method,moving cameras
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