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An Aquaculture-Based Binary Classifier for Fish Detection using Multilayer Artificial Neural Network

机译:基于水产养殖的二元分类器,用于使用多层人工神经网络进行鱼类检测

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Fish detection, a specific task in computer vision system for fish monitoring, is challenging due to the complex characteristics of the captured images. A proposed approach in tackling this challenging task was to incorporate a multilayer artificial neural network to a computer vision system algorithm, implemented in aquaculture. This computer vision system algorithm captured the images from the aquaculture setup. Then, these captured images were processed. After that, the features out of these processed images were extracted and utilized to develop this multilayer artificial neural network. The best configuration, which is trained with the least learning time and tested with least mean square error and highest accuracy, was determined by adjusting the number of neurons in the two hidden layers. The multilayer artificial neural network with 50 neurons in the first hidden layer and 10 neurons in the second layer was considered the best configuration; it has achieved learning time of 3.374 ms, mean square error of 0.2315, and accuracy of 79.00%, hence, proving the competitiveness of this approach.
机译:鱼类检测是鱼类监测的计算机视觉系统中的特定任务,由于捕获的图像的复杂特性,是挑战。解决这种具有挑战性的任务的提出方法是将多层人工神经网络纳入计算机视觉系统算法,在水产养殖中实现。此计算机视觉系统算法从水产养殖设置中捕获了图像。然后,处理这些捕获的图像。之后,提取并利用这些处理图像中的特征来发展该多层人工神经网络。通过调整两个隐藏层中的神经元数来确定具有至少学习时间和最小均方误差和最高精度的最小学习时间和最低精度测试的最佳配置。在第一隐藏层中具有50个神经元的多层人工神经网络和第二层中的10个神经元的神经网络被认为是最佳配置;它已经实现了3.374毫秒的学习时间,平均方误差为0.2315,准确性为79.00%,因此证明了这种方法的竞争力。

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