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Deep Learning-Based Object Detection Techniques for Remote Sensing Images: A Survey

Journal

REMOTE SENSING
Volume 14, Issue 10, Pages -

Publisher

MDPI
DOI: 10.3390/rs14102385

Keywords

object detection; deep learning; remote sensing; neural network; weakly supervised learning

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This paper reviews the development history of remote sensing object detection techniques and systematically summarizes the steps used in deep learning-based detection algorithms. It introduces a taxonomy based on various detection methods, summarizing major improvement strategies such as attention mechanisms, multi-scale feature fusion, and super-resolution. It also presents recognized open-source benchmarks and evaluation metrics for remote sensing detection. Lastly, it discusses the challenges and potential trends in the field of RSOD.
Object detection in remote sensing images (RSIs) requires the locating and classifying of objects of interest, which is a hot topic in RSI analysis research. With the development of deep learning (DL) technology, which has accelerated in recent years, numerous intelligent and efficient detection algorithms have been proposed. Meanwhile, the performance of remote sensing imaging hardware has also evolved significantly. The detection technology used with high-resolution RSIs has been pushed to unprecedented heights, making important contributions in practical applications such as urban detection, building planning, and disaster prediction. However, although some scholars have authored reviews on DL-based object detection systems, the leading DL-based object detection improvement strategies have never been summarized in detail. In this paper, we first briefly review the recent history of remote sensing object detection (RSOD) techniques, including traditional methods as well as DL-based methods. Then, we systematically summarize the procedures used in DL-based detection algorithms. Most importantly, starting from the problems of complex object features, complex background information, tedious sample annotation that will be faced by high-resolution RSI object detection, we introduce a taxonomy based on various detection methods, which focuses on summarizing and classifying the existing attention mechanisms, multi-scale feature fusion, super-resolution and other major improvement strategies. We also introduce recognized open-source remote sensing detection benchmarks and evaluation metrics. Finally, based on the current state of the technology, we conclude by discussing the challenges and potential trends in the field of RSOD in order to provide a reference for researchers who have just entered the field.

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