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CUDA based Level Set Method for 3D Reconstruction of Fishes from Large Acoustic Data

机译:基于CUDa的大声学数据鱼类三维重建水平集方法

摘要

Acoustic images present views of underwater dynamics, even in high depths. With multi-beam echo sounders (SONARs), it is possible to capture series of 2D high resolution acoustic images. 3D reconstruction of the water column and subsequent estimation of fish abundance and fish species identification is highly desirable for planning sustainable fisheries. Main hurdles in analysing acoustic images are the presence of speckle noise and the vast amount of acoustic data. This paper presents a level set formulation for simultaneous fish reconstruction and noise suppression from raw acoustic images. Despite the presence of speckle noise blobs, actual fish intensity values can be distinguished by extremely high values, varying exponentially from the background. Edge detection generally gives excessive false edges that are not reliable. Our approach to reconstruction is based on level set evolution using Mumford-Shah segmentation functional that does not depend on edges in an image. We use the implicit function in conjunction with the image to robustly estimate a threshold for suppressing noise in the image by solving a second differential equation. We provide details of our estimation of suppressing threshold and show its convergence as the evolution proceeds. We also present a GPU based streaming computation of the method using NVIDIA's CUDA framework to handle large volume data-sets. Our implementation is optimised for memory usage to handle large volumes.
机译:声学图像即使在很深的地方也能呈现水下动力学的视图。使用多波束回声测深仪(SONAR),可以捕获一系列2D高分辨率声学图像。为了计划可持续渔业,非常需要水柱的3D重建以及随后的鱼类丰度估计和鱼类种类鉴定。分析声学图像的主要障碍是斑点噪声的存在和大量声学数据。本文提出了一种水平集公式,用于同时进行鱼类重建和原始声音图像的噪声抑制。尽管存在斑点噪声斑点,但实际鱼的强度值仍可以通过极高的值来区分,该值与背景呈指数变化。边缘检测通常会产生不可靠的过多虚假边缘。我们的重建方法基于使用不依赖于图像边缘的Mumford-Shah分割功能的水平集演化。我们将隐式函数与图像结合使用,通过求解第二个微分方程来稳健地估计用于抑制图像中噪声的阈值。我们提供了抑制阈值估计的详细信息,并显示了随着进化的进展其收敛性。我们还介绍了使用NVIDIA的CUDA框架处理大量数据集的基于GPU的方法流计算。我们的实现针对内存使用进行了优化,以处理大容量。

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