Coarse-To-Fine Segmentation Refinement and Missing Shape Recovery for Halibut Fish

Gaoang Wang, Jenq-Neng Hwang, Yiling Xu, Farron Wallace, Craig S. Rose
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引用次数: 1

Abstract

Image processing and analysis techniques have drawn increasing attention since they enable a non-extractive and non-lethal approach to fisheries survey. To measure the fish size and length accurately, a reliable segmentation result is required. However, there are two major challenges about the segmentation. One is that images may be blurred due to the spray of water on the camera lens, and the other is that some part of the fish body is out of the camera view. In this paper, we present an innovative and effective contour-based segmentation refinement and missing shape recovery method from an arbitrary initial segmentation. The refinement is processed from coarse level to fine level. At the coarse level, a weighted affine transform is estimated to align the entire fish contour of the initial segmentation with trained representative contours. At the finer and finest levels, we iteratively refine the contour segments to represent the poorly segmented or shape missing image. The proposed method shows promising results on segmentation and length measurement for both water drop images and images with part of the fish out of the camera view.
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大比目鱼粗-细分割细化及缺失形状恢复
图像处理和分析技术已引起越来越多的注意,因为它们使渔业调查成为一种非采掘和非致命的方法。为了准确测量鱼的大小和长度,需要可靠的分割结果。然而,在细分方面存在两个主要挑战。一是由于相机镜头上的水花可能会使图像模糊,二是鱼身体的某些部分超出了相机的视野。本文提出了一种新颖有效的基于任意初始分割的轮廓分割细化和缺失形状恢复方法。细化从粗级到细级。在粗层次上,估计一个加权仿射变换,使初始分割的整个鱼轮廓与训练的代表性轮廓对齐。在越来越精细的层次上,我们迭代地细化轮廓段来表示分割不良或形状缺失的图像。该方法在水滴图像和部分鱼在相机视野外的图像的分割和长度测量方面都取得了良好的效果。
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