A Target Detection Algorithm for Remote Sensing Images Based on Deep Learning

4区 医学 Q3 Medicine Contrast media & molecular imaging Pub Date : 2021-12-18 DOI:10.1155/2021/3474921
Yi Lv, Zhengbo Yin, Zhezhou Yu
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Abstract

In order to improve the accuracy of remote sensing image target detection, this paper proposes a remote sensing image target detection algorithm DFS based on deep learning. Firstly, dimension clustering module, loss function, and sliding window segmentation detection are designed. The data set used in the experiment comes from GoogleEarth, and there are 6 types of objects: airplanes, boats, warehouses, large ships, bridges, and ports. Training set, verification set, and test set contain 73490 images, 22722 images, and 2138 images, respectively. It is assumed that the number of detected positive samples and negative samples is A and B, respectively, and the number of undetected positive samples and negative samples is C and D, respectively. The experimental results show that the precision-recall curve of DFS for six types of targets shows that DFS has the best detection effect for bridges and the worst detection effect for boats. The main reason is that the size of the bridge is relatively large, and it is clearly distinguished from the background in the image, so the detection difficulty is low. However, the target of the boat is very small, and it is easy to be mixed with the background, so it is difficult to detect. The MAP of DFS is improved by 12.82%, the detection accuracy is improved by 13%, and the recall rate is slightly decreased by 1% compared with YOLOv2. According to the number of detection targets, the number of false positives (FPs) of DFS is much less than that of YOLOv2. The false positive rate is greatly reduced. In addition, the average IOU of DFS is 11.84% higher than that of YOLOv2. For small target detection efficiency and large remote sensing image detection, the DFS algorithm has obvious advantages.

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基于深度学习的遥感图像目标检测算法。
为了提高遥感图像目标检测的精度,本文提出了一种基于深度学习的遥感图像目标检测算法DFS。首先,设计了维数聚类模块、损失函数和滑动窗口分割检测;实验中使用的数据集来自GoogleEarth,有6种类型的对象:飞机、船只、仓库、大型船舶、桥梁和港口。训练集包含73490张图片,验证集包含22722张图片,测试集包含2138张图片。假设检测到的阳性样本数量为A,阴性样本数量为B,未检测到的阳性样本数量为C,阴性样本数量为D。实验结果表明,DFS对6种目标的检测精度-查全率曲线表明,DFS对桥梁的检测效果最好,对船只的检测效果最差。主要原因是桥的尺寸比较大,在图像中与背景区分明显,所以检测难度较低。但是,船的目标很小,很容易与背景混杂,因此很难被检测到。与YOLOv2相比,DFS的MAP提高了12.82%,检测准确率提高了13%,召回率略有下降1%。从检测目标的数量来看,DFS的误报数(FPs)远远少于YOLOv2。假阳性率大大降低。此外,DFS的平均欠条比YOLOv2高11.84%。在小目标检测效率和大遥感图像检测方面,DFS算法具有明显的优势。
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来源期刊
自引率
0.00%
发文量
619
审稿时长
6 months
期刊介绍: Contrast Media & Molecular Imaging [CMMI] is a new journal providing an international forum for the expeditious publication of original scientific papers, reviews, highlights, surveys, and letters to the editors in the booming areas of contrast media and molecular imaging. The Journal is aimed at the academic, medical, and industrial communities, at the developers and users of these emerging and rapidly developing technologies, mainly in the areas of Magnetic Resonance Imaging and Magnetic Resonance Spectroscopy, but also embracing all other in vivo imaging technologies such as x-Ray, PET/CT, etc.
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