Object Detection in Optical Remote Sensing Images Based on Improved Lightweight Neural Network

Zhen Cheng, Jianshe Xiong, PengCheng Yang, Kai Yang, Yunnuo Chen
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Abstract

The optical remote sensing images collected by Unmanned Aerial Vehicle Remote Sensing (UAVRS) with real-time information, and object detection of the optical remote sensing images has significant development potential in the many fields such as transportation and agriculture. In addition to large objects such as buildings, small objects such as vehicles and ships can also be clearly observed in the collected high-resolution remote sensing images. This paper mainly focuses on the detection of vehicles and ships in remote sensing images, and proposes Scene-SSD based on the main principles of MobileNetV3 and SSD. In this paper, we improve the basic block bottleneck of MobileNetV3, introduce Generalized Focal Loss (GFL) function to replace the original loss function in SSD, improve the class imbalance problem and make the bounding box estimations are more precise, and the network model is trained by transfer learning to improve its generalization ability. It is experimentally illustrated that in object detection of remote sensing images, the Scene-SSD proposed in this paper is fast and the tested mAP can reach 77.9%, which is better than the MobileNetV3-SSDLite with the same network structure in the comparison test.
基于改进轻量级神经网络的光学遥感图像目标检测
无人机遥感(UAVRS)采集的具有实时信息的光学遥感图像,以及对光学遥感图像的目标检测在交通运输、农业等诸多领域具有重大的发展潜力。在采集到的高分辨率遥感图像中,除了建筑物等大型物体外,还可以清晰地观察到车辆、船舶等小型物体。本文主要针对遥感图像中车辆和船舶的检测问题,基于MobileNetV3和SSD的主要原理,提出了Scene-SSD。本文改进了MobileNetV3的基本块瓶颈,引入广义焦损失(Generalized Focal Loss, GFL)函数取代SSD中原有的损失函数,改进了类不平衡问题,使边界盒估计更加精确,并通过迁移学习对网络模型进行训练,提高其泛化能力。实验表明,在遥感图像的目标检测中,本文提出的Scene-SSD速度快,测试mAP可达77.9%,在对比测试中优于相同网络结构的MobileNetV3-SSDLite。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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