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LMO-YOLO: A Ship Detection Model for Low-Resolution Optical Satellite Imagery

Qizhi Xu, Yuan Li, Zhenwei Shi

2022IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing42 citationsDOIOpen Access PDF

Abstract

It has been observed that the existing convolutional neural network (CNN)-based ship detection models often result in high false detection rate in low-resolution optical satellite images. This problem arises from the following factors: 1) the current 8-b rescaling schemes make the images lose some important information about ships in low-resolution imagery; 2) the effective features of ships at low resolution are far fewer than those of ships at high resolution; and 3) the detection of low-resolution ships is more sensitive to object-background contrast variation. To solve these problems, a low-resolution marine object (LMO) detection YOLO model, called LMO-YOLO, is proposed in this article. First, a multiple linear rescaling scheme is developed to quantize the original satellite images into 8-b images; second, dilated convolutions are included in a YOLO network to extract object features and object-background features; finally, an adaptive weighting scheme is designed to balance the loss between easy-to-detect ships and hard-to-detect ships. The proposed method was validated by level 1 product images captured by the wide-field-of-view sensor on the GaoFen-1 satellite. The experimental results demonstrated that our method accurately detected ships from low-resolution images and outperformed state-of-the-art methods.

Topics & Concepts

Computer scienceSatelliteObject detectionArtificial intelligenceWeightingConvolutional neural networkComputer visionImage resolutionRemote sensingPattern recognition (psychology)GeographyRadiologyAerospace engineeringEngineeringMedicineRemote-Sensing Image ClassificationAdvanced Neural Network ApplicationsInfrared Target Detection Methodologies
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