Title
STC-Det: A Slender Target Detector Combining Shadow and Target Information in Optical Satellite Images
Abstract
Object detection has made great progress. However, due to the unique imaging method of optical satellite remote sensing, the detection of slender targets is still insufficient. Specifically, the perspective of optical satellites is small, and the characteristics of slender targets are severely lost during imaging, resulting in insufficient detection task information; at the same time, the appearance of slender targets in the image is greatly affected by the satellite perspective, which is likely to cause insufficient generalization capabilities of conventional detection models. In response to these two points, we have made some improvements. First, in this paper, we introduce the shadow as auxiliary information to complement the trunk features of the target lost in imaging. Second, to reduce the impact of satellite perspective on imaging, in this paper, we use the characteristic that shadow information is not affected by satellite perspective to design STC-Det. STC-Det treats the shadow and the target as two different types of targets and uses the shadow information to assist the detection, reducing the impact of the satellite perspective on detection. Among them, in order to improve the performance of STC-Det, we propose an automatic matching method (AMM) of shadow and target and a feature fusion method (FFM). Finally, this paper proposes a new method to calculate the heatmaps of detectors, which verifies the effectiveness of the proposed network in a visual way. Experiments show that when the satellite perspective is variable, the precision of STC-Det is increased by 1.7%, and when the satellite perspective is small, the precision of STC-Det is increased by 5.2%.</p>
Year
DOI
Venue
2021
10.3390/rs13204183
REMOTE SENSING
Keywords
DocType
Volume
optical satellite image, shadow, slender targets, object detection
Journal
13
Issue
Citations 
PageRank 
20
0
0.34
References 
Authors
0
4
Name
Order
Citations
PageRank
Zhaoyang Huang101.01
Feng Wang2193.05
Hongjian You310317.44
Yuxin Hu401.01