Computer Vision Based Fish Tracking And Behaviour Detection System

S. S, M. M, Ujjwal Verma, R. Pai
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引用次数: 10

Abstract

Computer vision-based technologies can be effectively adopted to enhance the performance and productivity of aquaculture industries. Application of these technologies can ease the life of fish farmers and improve the harvest of aquaculture. Fishes are much susceptible to their environment. Small changes in the water quality parameter can increase the mortality rate. Fishes are also known to show abnormal behaviour patterns when experiencing stress. Early detection of these anomalous patterns can avoid commercial losses for aqua fish farmers. Culturing of fish like Sillago-sihama is a tedious and risky task as it is highly sensitive to its environment. On the other hand, it has a high nutrient and commercial value. To this end, an attempt is made to develop a decision support system for identifying abnormal behaviour patterns of Sillago-sihama and thereby assisting the fish farmers to improve productivity. The proposed research detects three behavioural patterns of Sillago-sihama viz. swimming at the surface, no movement and frantic movement patterns. This work proposes a pattern analysis and behaviour identification model using the motion information obtained from tracking by detection method. Extensive experimental results show that the novel approach is reliable in detecting different patterns of Sillago-sihama.
基于计算机视觉的鱼类跟踪与行为检测系统
基于计算机视觉的技术可以有效地用于提高水产养殖业的生产性能和生产力。这些技术的应用可以改善养鱼户的生活,提高水产养殖的产量。鱼类很容易受环境的影响。水质参数的微小变化会增加死亡率。鱼类在经历压力时也会表现出异常的行为模式。及早发现这些异常模式可以避免水产养殖户的商业损失。养殖像西拉戈-西哈马这样的鱼是一项乏味而危险的任务,因为它对环境非常敏感。另一方面,它具有很高的营养价值和商业价值。为此目的,试图发展一个决策支助系统,以查明西拉戈-西哈马的异常行为模式,从而协助养鱼户提高生产力。这项研究发现了Sillago-sihama的三种行为模式,即在水面上游泳,不运动和疯狂的运动模式。本文提出了一种基于检测跟踪获得的运动信息的模式分析和行为识别模型。大量的实验结果表明,该方法可以可靠地检测出不同类型的西拉戈-西哈马。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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