Abstract

Object detection is an important task of remote sensing applications. In recent years, with the development of deep convolutional neural networks, object detection in remote sensing images has made great improvements. However, the large variation of object scales and complex scenarios will seriously affect the performance of the detectors. To solve these problems, a novel object detection algorithm based on multi-receptive-field features and relation-connected attention is proposed for remote sensing images to achieve more accurate detection results. Specifically, we propose a multi-receptive-field feature extraction module with dilated convolution to aggregate the context information of different receptive fields. This achieves a strong capability of feature representation, which can effectively adapt to the scale changes of objects, either due to various object scales or different resolutions. Then, a relation-connected attention module based on relation modeling is constructed to automatically select and refine the features, which combines global and local attention to make the features more discriminative and can effectively improve the robustness of the detector. We designed these two modules as plug-and-play blocks and integrated them into the framework of Faster R-CNN to verify our method. The experimental results on NWPU VHR-10 and HRSC2016 datasets demonstrate that these two modules can effectively improve the performance of basic deep CNNs, and the proposed method can achieve better results of multiscale object detection in complex backgrounds.

Highlights

  • IntroductionWith the development of remote sensing technology, object detection in remote sensing images has become a popular topic

  • The mean average precision is a widely used evaluation metric. mAP is calculated by precision (P) and recall (R)

  • We propose a novel method combined with multi-receptive-field features and relation-connected attention for multiscale object detection in optical remote sensing images

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Summary

Introduction

With the development of remote sensing technology, object detection in remote sensing images has become a popular topic. Satellite remote sensing is not restricted by airspace and can continuously observe the Earth’s surface dynamically, which has become the primary technique of the dynamic detection, tracking and recognition of time-sensitive targets. Remote sensing technology can quickly obtain the location, attributes, distribution and movement characteristics of objects, providing support for relevant decision-making. Satellite remote sensing technology has significantly advanced, and high-resolution optical remote sensing images can provide more detailed and richer information than SAR images [1], which has attracted great attention in the field of object detection. In comparison to SAR images, optical remote sensing images can provide clear details in terms of geometric shape, structure, color and texture—intuitive information which is easier for human understanding and interpretation [2]. The utilization of a large number of optical satellites and UAVs allows for the acquisition

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