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Splash Detection in Fish Plants Surveillance Videos Using Deep Learning

机译:使用深度学习在鱼类植物监控视频中进行飞溅检测

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The objective of this paper is to present and evaluate an improved method for automatic splash detection in surveillance videos of offshore fish production plants. In fishing and aquaculture industry one of the main challenges is production loss, that is, among the other things, caused by poor handling of the fish during operations such as crowding and delousing. This operations are very stressful for fish, and may trigger an increase in mortality, which is directly correlated with the production and profit loss. Because of this, improved solutions based on new technologies are being investigated, in order to decrease the risk of unnecessary stress, and improve the quality of production. One of the main parameters used for remote visual inspection of fish state is surface activity, which can be observed in a form of fish jumping and splashing. For that reason, in this paper, a novel algorithm based on using of Convolutional Neural Networks (CNNs) for splash detection is presented, which outperforms all existing algorithms based on local descriptors and linear classifiers. Using this approach we obtained splash detection accuracy of 99.9%.
机译:本文的目的是提出和评估一种改进的方法,用于在近海鱼类生产厂的监控录像中进行自动飞溅检测。在渔业和水产养殖业中,主要挑战之一是生产损失,这主要是由于在拥挤和出水等操作过程中对鱼的处理不善造成的。这种操作对鱼类造成很大压力,并可能导致死亡率增加,这直接关系到生产和利润损失。因此,正在研究基于新技术的改进解决方案,以减少不必要压力的风险并提高生产质量。用于鱼眼远程视觉检查的主要参数之一是表面活动,可以以鱼跳跃和飞溅的形式观察到。因此,本文提出了一种基于卷积神经网络(CNN)进行飞溅检测的新颖算法,该算法优于基于局部描述符和线性分类器的所有现有算法。使用这种方法,我们获得了99.9%的飞溅检测精度。

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