Abstract

Moving target detection plays a primary and pivotal role in avionics visual analysis, which aims to completely and accurately detect moving objects from complex backgrounds. However, due to the relatively small sizes of targets in aerial video, many deep networks that achieve success in normal size object detection are usually accompanied by a high rate of false alarms and missed detections. To address this problem, we propose a novel visual detail augmented mapping approach for small aerial target detection. Concretely, we first present a multi-cue foreground segmentation algorithm including motion and grayscale information to extract potential regions. Then, based on the visual detail augmented mapping approach, the regions that might contain moving targets are magnified to multi-resolution to obtain detailed target information and rearranged into new foreground space for visual enhancement. Thus, original small targets are mapped to a more efficient foreground augmented map which is favorable for accurate detection. Finally, driven by the success of deep detection network, small moving targets can be well detected from aerial video. Experiments extensively demonstrate that the proposed method achieves success in small aerial target detection without changing the structure of the deep network. In addition, compared with the-state-of-art object detection algorithms, it performs favorably with high efficiency and robustness.

Highlights

  • Aerial target detection, as the key and foundation of avionics data understanding has a crucial impact on the whole system’s performance, especially regarding the detection accuracy of small objects.The size of small objects occupies less than 1.0% of the total pixels

  • We propose a novel visual detail augmented mapping approach that provides a wealth of specific information about the small target of interest

  • We propose a novel visual detail augmented mapping method to map these potential regions into a new foreground space, which is the fundamental technique of our work

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Summary

Introduction

As the key and foundation of avionics data understanding has a crucial impact on the whole system’s performance, especially regarding the detection accuracy of small objects.The size of small objects occupies less than 1.0% of the total pixels. Compared with normal visual data, aerial data have unique characteristics in many respects Their field of view is large in many cases and contains more visual content. It provides more comprehensive scene information for global analysis, the objects of interest usually account for less and do not have enough detail for detection. This leads to the failure of most state-of-the-art deep detection models. Effectively detecting small targets is one of the critical problems for aerial object detection systems.

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