Abstract

Real-time detection of small unmanned aerial vehicle (SUAV) targets in SUAV surveillance systems has become a challenge due to their high mobility, sudden bursts, and small sizes. In this study, we used infrared sensors and Convolutional Neural Networks (CNN)-based detectors to achieve the real-time detection of SUAV targets. Existing object detectors generally suffer from a computational burden or low detection accuracy on small targets, which limits their practicality and further application in SUAV surveillance systems. To solve these problems, we developed a real-time SUAV target detection algorithm based on deep residual networks. In order to improve the sensitivity to small targets, a laterally connected multi-scale feature fusion approach was proposed to fully combine the context features and semantic features. A densely paved pre-defined box with geometric analysis was used for single-stage prediction. Compared with the state-of-the-art object detectors, the proposed method achieved superior performance with respect to average-precision and frames-per-second. As the training set was limited, to improve generalization, we investigate the benefits introduced by data augmentation and data balance, and proposed a weighted augmentation approach. The proposed approach improved the robustness of the detector and the overall accuracy.

Highlights

  • Small unmanned aerial vehicle (SUAV) has become a research hotspot with their potential to revolutionize commercial industries, the public domain, and the military [1]–[6]

  • The real-time detection of SUAV targets is the key technology in SUAV surveillance systems [7]–[10]

  • To solve the problem of poor detection accuracy of small infrared SUAV targets, we proposed a multi-scale feature map fusion method via dense lateral connections

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Summary

Introduction

Small unmanned aerial vehicle (SUAV) has become a research hotspot with their potential to revolutionize commercial industries, the public domain, and the military [1]–[6]. Because of the portability and maneuverability of SUAVs, many dangerous items (e.g., explosives and firearms) can be loaded on them, posing a serious threat to the public security. The detection and monitoring of SUAV targets is the basic prerequisite for defense against attacking [2]. Effective monitoring of the SUAV targets is urgently needed. There is a huge demand to develop a reliable SUAV early warning and monitoring system for protecting high-value targets. The real-time detection of SUAV targets is the key technology in SUAV surveillance systems [7]–[10]

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