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首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >A novel deep learning instance segmentation model for automated marine oil spill detection
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A novel deep learning instance segmentation model for automated marine oil spill detection

机译:自动化海水泄漏检测的新型深度学习实例分段模型

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摘要

The visual similarity of oil slick and other elements, known as look-alike, affects the reliability of synthetic aperture radar (SAR) images for marine oil spill detection. So far, detection and discrimination of oil spill and look-alike are still limited to the use of traditional machine learning algorithms and semantic segmentation deep learning models with limited accuracy. Thus, this study developed a novel deep learning oil spill detection model using computer vision instance segmentation Mask-Region-based Convolutional Neural Network (Mask R-CNN) model. The model training was conducted using transfer learning on the ResNet 101 on COCO as backbone in combination with Feature Pyramid Network (FPN) architecture for feature extraction at 30 epochs with 0.001 learning rate. Testing of the model was conducted using the least training and validation loss value on the withheld testing images. The model's performance was evaluated using precision, recall, specificity, IoU, F1-measure and overall accuracy values. Ship detection and segmentation had the highest performance with overall accuracy of 98.3%. The model equally showed a higher accuracy for oil spill and look-alike detection and segmentation although oil spill detection outperformed look-alike with overall accuracy values of 96.6% and 91.0% respectively. The study concluded that the deep learning instance segmentation model performs better than conventional machine learning models and deep learning semantic segmentation models in detection and segmentation.
机译:石油光滑和其他元素的视觉相似性,称为视图相似,影响了用于海洋溢油检测的合成孔径雷达(SAR)图像的可靠性。到目前为止,漏油和视野的检测和歧视仍然仅限于使用传统的机器学习算法和语义分割深层学习模型,精度有限。因此,本研究开发了一种使用基于计算机视觉实例分割掩模区域的卷积神经网络(掩模R-CNN)模型的新型深度学习漏油泄漏检测模型。在Coco上的Reset 101上作为骨干网上的转移学习进行了模型培训,与特征金字塔网络(FPN)架构相结合,用于30个时代的特征提取,具有0.001学习率。使用追溯测试图像上的最小训练和验证损失值进行模型的测试。使用精度,召回,特异性,IOU,F1度和整体精度值来评估模型的性能。船舶检测和分割具有最高性能,整体准确性为98.3%。该模型同样展示了漏油泄漏和视野检测和分割的更高精度,尽管漏油泄漏检测显得优于96.6%和91.0%的总体精度值。该研究得出结论,深度学习实例分割模型比传统机器学习模型和检测和分割中的深度学习语义分割模型更好。

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