A brief review and challenges of object detection in optical remote sensing imagery

IF 0.6 Q4 COMPUTER SCIENCE, THEORY & METHODS Multiagent and Grid Systems Pub Date : 2020-01-01 DOI:10.3233/mgs-200330
Shahid Karim, Ye Zhang, Shoulin Yin, Irfana Bibi, Ali Anwar Brohi
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引用次数: 16

Abstract

Traditional object detection algorithms and strategies are difficult to meet the requirements of data processing efficiency, performance, speed and intelligence in object detection. Through the study and imitation of the cognitive ability of the brain, deep learning can analyze and process the data features. It has a strong ability of visualization and becomes the mainstream algorithm of current object detection applications. Firstly, we have discussed the developments of traditional object detection methods. Secondly, the frameworks of object detection (e.g. Region-based CNN (R-CNN), Spatial Pyramid Pooling Network (SPP-NET), Fast-RCNN and Faster-RCNN) which combine region proposals and convolutional neural networks (CNNs) are briefly characterized for optical remote sensing applications. You only look once (YOLO) algorithm is the representative of the object detection frameworks (e.g. YOLO and Single Shot MultiBox Detector (SSD)) which transforms the object detection into a regression problem. The limitations of remote sensing images and object detectors have been highlighted and discussed. The feasibility and limitations of these approaches will lead researchers to prudently select appropriate image enhancements. Finally, the problems of object detection algorithms in deep learning are summarized and the future recommendations are also conferred.
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光学遥感图像中目标检测的综述与挑战
传统的目标检测算法和策略难以满足目标检测对数据处理效率、性能、速度和智能的要求。深度学习通过对大脑认知能力的研究和模仿,对数据特征进行分析和处理。它具有很强的可视化能力,成为当前目标检测应用的主流算法。首先,我们讨论了传统目标检测方法的发展。其次,简要介绍了基于区域的CNN (R-CNN)、空间金字塔池网络(SPP-NET)、Fast-RCNN和Faster-RCNN等结合区域建议和卷积神经网络(CNN)的光学遥感目标检测框架。你只看一次(YOLO)算法是目标检测框架的代表(例如YOLO和Single Shot MultiBox Detector (SSD)),它将目标检测转化为回归问题。强调和讨论了遥感图像和目标探测器的局限性。这些方法的可行性和局限性将引导研究人员谨慎选择适当的图像增强。最后,总结了深度学习中目标检测算法存在的问题,并对未来的发展提出了建议。
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来源期刊
Multiagent and Grid Systems
Multiagent and Grid Systems COMPUTER SCIENCE, THEORY & METHODS-
CiteScore
1.50
自引率
0.00%
发文量
13
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