Abstract

Aircraft is a means of transportation and weaponry, which is crucial for civil and military fields to detect from remote sensing images. However, detecting aircraft effectively is still a problem due to the diversity of the pose, size, and position of the aircraft and the variety of objects in the image. At present, the target detection methods based on convolutional neural networks (CNNs) lack the sufficient extraction of remote sensing image information and the post-processing of detection results, which results in a high missed detection rate and false alarm rate when facing complex and dense targets. Aiming at the above questions, we proposed a target detection model based on Faster R-CNN, which combines multi-angle features driven and majority voting strategy. Specifically, we designed a multi-angle transformation module to transform the input image to realize the multi-angle feature extraction of the targets in the image. In addition, we added a majority voting mechanism at the end of the model to deal with the results of the multi-angle feature extraction. The average precision (AP) of this method reaches 94.82% and 95.25% on the public and private datasets, respectively, which are 6.81% and 8.98% higher than that of the Faster R-CNN. The experimental results show that the method can detect aircraft effectively, obtaining better performance than mature target detection networks.

Highlights

  • Remote sensing image is a crucial and indispensable resource widely used in civil and military fields [1,2]

  • As one of the most important tasks and research hotspots of remote sensing image interpretation, object detection has attracted the attention of academia and industry with the higher spatial resolution of remote sensing images and the richer information contained in the images

  • Most target detection models based on convolutional neural networks are unable to fully extract features from remote sensing images and the results of target detection are mostly unprocessed, which can lead to missed detections and false detections of targets

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Summary

Introduction

Remote sensing image is a crucial and indispensable resource widely used in civil and military fields [1,2]. Aircraft detection from remote sensing images has become the focus of attention. With the increasing capacity of computer data processing, deep learning methods based on convolutional neural networks have made remarkable achievements in speech recognition, computer vision, autonomous driving, and other fields [4,5,6,7]. Compared with the traditional methods, the deep learning methods based on convolutional neural network can extract features with richer semantic information, higher level, stronger robustness and generalization ability from samples in a data-driven way. The convolutional neural networks with excellent feature expression abilities have been widely used in Remote Sens.

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