TIB-Net: Drone Detection Network with Tiny Iterative Backbone

Han Sun, Jian Yang, Jiaquan Shen, Dong Liang, Ningzhong Liu, Huiyu Zhou
2020 IEEE Access  
With the widespread application of drone in commercial and industrial fields, drone detection has received increasing attention in public safety and others. However, due to various appearance of smallsize drones, changeable and complex environments, and limited memory resources of edge computing devices, drone detection remains a challenging task nowadays. Although deep convolutional neural network (CNN) has shown powerful performance in object detection in recent years, most existing CNN-based
more » ... methods cannot balance detection performance and model size well. To solve the problem, we develop a drone detection network with tiny iterative backbone named TIB-Net. In this network, we propose a structure called cyclic pathway, which enhances the capability to extract effective features of small object, and integrate it into existing efficient method Extremely Tiny Face Detector (EXTD). This method not only significantly improves the accuracy of drone detection, but also keeps the model size at an acceptable level. Furthermore, we integrate spatial attention module into our network backbone to emphasize information of small object, which can better locate small-size drone and further improve detection performance. In addition, we present massive manual annotations of object bounding boxes for our collected 2860 drone images as a drone benchmark dataset, which is now publicly available 1 . In this work, we conduct a series of experiments on our collected dataset to evaluate TIB-Net, and the result shows that our proposed method achieves mean average precision of 89.2% with model size of 697.0KB, which achieves the state-of-the-art results compared with existing methods. INDEX TERMS Drone detection, tiny iterative backbone, TIB-Net, cyclic pathway, spatial attention, drone benchmark dataset.
doi:10.1109/access.2020.3009518 fatcat:4uqxwlgy6jc3xg6phrv2erfwhu