Abstract

Aiming at the real-time detection of multiple objects and micro-objects in large-scene remote sensing images, a cascaded convolutional neural network real-time object-detection framework for remote sensing images is proposed, which integrates visual perception and convolutional memory network reasoning. The detection framework is composed of two fully convolutional networks, namely, the strengthened object self-attention pre-screening fully convolutional network (SOSA-FCN) and the object accurate detection fully convolutional network (AD-FCN). SOSA-FCN introduces a self-attention module to extract attention feature maps and constructs a depth feature pyramid to optimize the attention feature maps by combining convolutional long-term and short-term memory networks. It guides the acquisition of potential sub-regions of the object in the scene, reduces the computational complexity, and enhances the network’s ability to extract multi-scale object features. It adapts to the complex background and small object characteristics of a large-scene remote sensing image. In AD-FCN, the object mask and object orientation estimation layer are designed to achieve fine positioning of candidate frames. The performance of the proposed algorithm is compared with that of other advanced methods on NWPU_VHR-10, DOTA, UCAS-AOD, and other open datasets. The experimental results show that the proposed algorithm significantly improves the efficiency of object detection while ensuring detection accuracy and has high adaptability. It has extensive engineering application prospects.

Highlights

  • The automatic object detection technology based on remote sensing images is an intelligent data analysis method to realize automatic classification and location of remote sensing objects

  • Considering the characteristics of remote sensing images, a new real-time object detection algorithm based on visual perception and convolutional memory network reasoning is proposed for Electronics 2019, 8, 1151; doi:10.3390/electronics8101151

  • In order to verify the overall advancement of this model, we compare the most advanced object detection models based on deep learning that have been proposed in recent years

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Summary

Introduction

The automatic object detection technology based on remote sensing images is an intelligent data analysis method to realize automatic classification and location of remote sensing objects. It is one of the important research directions in the field of remote sensing image interpretation and has received extensive attention in the civil and military fields. Besides the serious interference caused by objective factors such as illumination, occlusion, and geometric deformation, multi-class, multi-scale, and multi-directional object detection in complex scenes has always been a crucial and challenging issue in the research of remote sensing image interpretation. Electronics 2019, 8, 1151 multi-object and micro-object detection in large-scene remote sensing images. The main work of this paper includes the following two points:

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