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Seagrass Propeller Scar Detection using Deep Convolutional Neural Network

机译:使用深卷积神经网络的海草螺旋桨疤痕检测

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Seagrass habitats are becoming extremely vulnerable due to human intrusion to seagrass meadows, which results in unbalanced marine ecosystems and extinction of marine animals. Traditionally, manual scarring has been used to identify and quantify seagrass propeller scars. However, this method requires site visitation and it is cost ineffective. In this paper, we propose deep learning method to automatically detect propeller seagrass scars in multispectral satellite images. Our proposed algorithm is more computationally efficient than our previous sparse coding detection model and can accurately detect seagrass scars. Additionally, we explored two pan-sharpening methods for obtaining high-resolution multispectral satellite images for scar detection. We evaluated our methods on four multispectral images collected in Florida and experimental results show that the proposed deep learning model combined with the Gram-Smith (GS) pan-sharpening approach achieved the best sensitivities in seagrass scar detection and this combination is also the most computational efficient method, requiring only 7 minutes for a testing image with a size of 1000x800 in testing phase.
机译:由于人类入侵海草草甸,海草生境变得极为脆弱,这导致海洋生态系统失衡和海洋动物灭绝。传统上,人工瘢痕形成已被用于识别和量化海草螺旋桨瘢痕。但是,这种方法需要现场访问,并且成本低效。在本文中,我们提出了一种深度学习方法来自动检测多光谱卫星图像中的螺旋桨海草疤痕。我们提出的算法比以前的稀疏编码检测模型具有更高的计算效率,并且可以准确地检测海草疤痕。此外,我们探索了两种泛锐化方法以获得用于疤痕检测的高分辨率多光谱卫星图像。我们在佛罗里达收集的四幅多光谱图像上评估了我们的方法,实验结果表明,所提出的深度学习模型与Gram-Smith(GS)泛锐化方法相结合,在海草疤痕检测中获得了最佳灵敏度,并且这种组合也是计算量最大的一种高效的方法,在测试阶段只需7分钟即可生成尺寸为1000x800的测试图像。

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