Affiliation of Author(s):电子信息工程学院
Journal:Int. Conf. Syst. Informatics, ICSAI
Abstract:Although Faster R-CNN has excellent performance in object detection, it still has some difficulties in detecting small targets and slightly overlapped targets in UAV (Unmanned Aerial Vehicle) images. Based on Faster R-CNN, this paper uses ResNet101 as a feature extractor. We increase the number of anchors from 9 to 15 in RPN so that the small targets can match more anchors and get sufficient training. Due to the increasement of anchors, this paper introduces a 1\times1 convolution layer to integrate features and reduce the feature map channels. We also apply RoIAlign to avoid the misalignment caused by RoIPool. The improved model effectively increases the detection rate of small targets and slightly overlapped targets so that it can be applied to human detection under UAV. The improved model can detect small targets with a size of about 30\times80 pixels on aerial images with resolution of 3840\times2160 pixels. Compared with Faster R-CNN, the improved model increases AP (Average Precision) from 74.31% to 79.77% on the WILDTRACK dataset. © 2018 IEEE.
Translation or Not:no
Date of Publication:2019-01-02
Co-author:Zhu, Hanshan,Qi, Yayun,Shi, Haochen,Zhou, Huiyu
Correspondence Author:Linda
Associate Professor
Alma Mater:香港城市大学
Education Level:香港城市大学
Degree:301
School/Department:College of Electronic and Information Engineering
Discipline:Signal and Information Processing. Communications and Information Systems
Business Address:电子信息工程学院办公楼328室
Contact Information:13915768576
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