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How Many Fish in a Tank? Constructing an Automated Fish Counting System by Using PTV Analysis

机译:坦克有多少条鱼?使用PTV分析构建自动鱼类计数系统

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Because escape from a net cage and mortality are constant problems in fish farming, health control and management of facilities are important in aquaculture. In particular, the development of an accurate fish counting system has been strongly desired for the Pacific Bluefin tuna farming industry owing to the high market value of these fish. The current fish counting method, which involves human counting, results in poor accuracy; moreover, the method is cumbersome because the aquaculture net cage is so large that fish can only be counted when they move to another net cage. Therefore, we have developed an automated fish counting system by applying particle tracking velocimetry (PTV) analysis to a shoal of swimming fish inside a net cage. In essence, we treated the swimming fish as tracer particles and estimated the number of fish by analyzing the corresponding motion vectors. The proposed fish counting system comprises two main components: image processing and motion analysis, where the image-processing component abstracts the foreground and the motion analysis component traces the individual's motion. In this study, we developed a Region Extraction and Centroid Computation (RECC) method and a Kalman filter and Chi-square (KC) test for the two main components. To evaluate the efficiency of our method, we constructed a closed system, placed an underwater video camera with a spherical curved lens at the bottom of the tank, and recorded a 360° view of a swimming school of Japanese rice fish (Oryzias latipes). Our study showed that almost all fish could be abstracted by the RECC method and the motion vectors could be calculated by the KC test. The recognition rate was approximately 90% when more than 180 individuals were observed within the frame of the video camera. These results suggest that the presented method has potential application as a fish counting system for industrial aquaculture.
机译:由于逃离净笼和死亡率是鱼类农业的不断存在的问题,水产养殖中的健康控制和管理的管理很重要。特别是,由于这些鱼的高市场价值,太平洋蓝鳍金枪鱼养殖行业强烈希望发展精确的鱼类计数系统。目前涉及人类计数的鱼类计数方法导致较差的准确性;此外,该方法是麻烦的,因为水产养殖网笼是如此之大,因为当它们移动到另一个网笼时,鱼只能计算。因此,我们通过将粒子跟踪速度(PTV)分析应用于网笼内的游泳鱼的浅滩来开发了一种自动鱼类计数系统。从本质上讲,我们将游泳鱼视为示踪剂颗粒,并通过分析相应的运动向量来估计鱼的数量。所提出的鱼类计数系统包括两个主要组件:图像处理和运动分析,其中图像处理组件摘要前景和运动分析组件追踪个人的运动。在这项研究中,我们开发了一个区域提取和质心计算(RECC)方法以及两个主要组件的卡尔曼滤波器和Chi-Square(KC)测试。为了评估我们的方法的效率,我们构建了一个封闭的系统,将一个水下摄像机放置在坦克底部的球形弯曲镜头,并记录了日本米饭(Oryzias Lavipes)的游泳学校的360°视图。我们的研究表明,几乎所有鱼类都可以通过RECC方法抽象,并且可以通过KC测试计算运动载体。当在摄像机的框架内观察到超过180个个体时,识别率约为90%。这些结果表明,所提出的方法具有潜在的应用作为工业水产养殖的鱼类计数系统。

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