S-FEATURE PYRAMID NETWORK AND ATTENTION MODEL FOR DRONE DETECTION
Pengcheng Dong (Shandong Normal University); Chuntao Wang (Shandong Normal University); Zhenyong Lu (Shandong Normal University); Kai Zhang (Shandong Normal University); Wenbo Wan (Shandong Normal University); Jiande Sun (Shandong Normal University)
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The issue of aviation safety has always received a great of attention and focus, and birds are also an important issue in aviation safety. Nowadays, drones have emerged and share the same airspace with birds at low altitudes. The problems associated with drones should also be taken into account. For example, small drones can be misused for illegal activities and the threat from them is on the rise. Driven by this situ- ation, we used data provided by the ICASSP Drone-vs-Bird detection Grand Challenge for drone detection and used the method of adding shallow feature pyramid network and at- tention model on SSD [1] (SFA-SSD) to solve the problem of drone detection in competition. Out of 30 test videos, our method was able to detect drones in 11 videos, with 8 videos scoring above 0.1 and only 3 videos scoring above 0.7.