基于深度学习的海洋遥感图像数据分类与分割

Naga Venkata Rishika.G, Rupa Ch., Akhil Babu.N, Navena M, Mahanthi Sekhar.M
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引用次数: 0

摘要

船舶监测在海上安全、港口管理、船舶交通、海上应急和国防等方面发挥着重要作用。利用目标检测方法U-Net和YOLOv2实现了基于图像的船舶检测,但这两种方法都存在局限性,U-Net在运行时只能运行一次图像,降低了图像的速度,而YOLOv2中所有的锚盒都是相同大小的,因此难以检测到大小和形状各异的目标。因此,为了解决这些问题,已经使用了更好的技术,如YOLOv3,在锚盒和U-net的帮助下,以超高速和各种大小的对象检测对象,它只需要少量的训练样本,但由于它对输入图像中的每个像素使用损失函数,因此在分割任务中提供了很高的结果,这允许简单地识别分割图中的特定细胞。因此,测量这些算法的性能以确定这两种算法中哪一种具有更高的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification and Segmentation of Marine Related Remote Sensing Imagery Data Using Deep Learning
Ship monitoring plays a crucial role in maritime safety, port administration, Ship traffic, maritime emergency and national defense. Using object detection methods U-Net and YOLOv2, image-based Ship detection has been put into practice but these methods have limitations, in U-Net at runtime, we can run the image only once which reduces its speed and in YOLOv2 all the anchor boxes are of same size, so objects with various sizes and shapes are difficult to detect. Hence to solve these issues a proposal with better techniques like YOLOv3 has been used to detect objects with super speed and various sizes of objects with the help of anchor boxes and U-net, which only requires a small number of training samples but offers high results for segmentation tasks due to its usage of a loss function for each pixel in the input image, this allows for simple identification of specific cells within the segmentation map. Hence the performance of these algorithms is measured to determine which of these two algorithms has more accuracy.
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