Abstract

Deriving from the imperative necessities for developing Sense and Avoid (SAA) capability of Unmanned Aerial Vehicle (UAV), a newly designed flying targets detection algorithm is presented in this paper for enhancing the UAV environment perception ability. Since spatiotemporal context is crucial for insuring the effectiveness of flying targets detection, the algorithm is constructed on the basis of spatiotemporal context fusion. The algorithm proposed in this paper contains three parts, namely the spatial context extraction, temporal context extraction and spatiotemporal context fusion. 1) In order to extract spatial context, dense sampling method is firstly applied to obtain dense image grids, then spatial context is generated via pre-learned conditional random field (CRF) model using a layered structure: dense image patches, bottom feature descriptors, sparse codes, and predicted CRF labels. 2) In order to extract temporal context, the forward and back motion history image (FBMHI) is firstly computed for detecting motion cues, and the adaptive foreground and background isolation is further adopted for acquiring the temporal probability map. 3) The presence probability map of flying targets is finally obtained by spatiotemporal context fusion, and flying targets is therefore picked out by analyzing fused presence probability map. A set of videos containing different drone models are selected for evaluation, and the comparisons against other algorithms demonstrate superiority of the proposed algorithm.

Highlights

  • The widespread use of Unmanned Aerial Vehicle (UAV) has imposed a great threaten to the National Aerospace System (NAS) [1], [2]

  • 3) EVALUATION FOR SPATIOTEMPORAL CONTEXT FUSION BASED FLYING TARGET DETECTION Detection Rates for video 1-6 are concluded in Fig.14, the overall detection rate is above 85%, representing the effectiveness of the algorithm designed in this paper

  • For increasing perception ability of vision based Sense and Avoid (SAA), a novel algorithm is designed for flying target detection

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Summary

INTRODUCTION

The widespread use of Unmanned Aerial Vehicle (UAV) has imposed a great threaten to the National Aerospace System (NAS) [1], [2]. The work pattern of machine vision is totally passive and non-cooperative, the targets inside the visual information has to be picked out by artificially designed algorithms. The flying target detection algorithm designed for machine vision based SAA is well worthy of research. Unlike cooperative sensing devices, the raw information obtained by machine vision does not contain target location, it is hard to pick out flying targets directly from images/videos. For this reason, flying target detection algorithm is essential for ensuring the effectiveness of vision based SAA system.

RELATED WORKS
FLYING TARGET DETECTION VIA SPATIOTEMPORAL
1) EVALUATION OF SPATIAL CONTEXT EXTRACTION
CONCLUSION
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