CNN Modeling for Recognizing Local Fish

Ashif Raihan, Md. Zahed Hossain Monju, M. Hasan, Md. Tarek Habib, Md. Ismail Jabiullah, Mohammad Shorif Uddin
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引用次数: 2

Abstract

Automatic fish recognition is a challenging problem as far as machine vision is concerned. In any case, there is no mechanized gadget accessible that can recognize the fish and deal with an understanding in Bangladesh. This paper investigates fish recognition using multi-picture classification including deep learning procedures. For image processing and classification, TensorFlow Keras library is used in this work. The most famous image recognition deep learning model Convolutional Neural Network (CNN) is used to assess the dependability of our work. We have implemented three custom-built CNN models to see which one exhibits the best performance. To find the most effective model, the hyperparameter tuning technique is used. We have closely observed the matrix of parameters and performance to find the best model. After that model M2 is selected for real-life prediction as it has produced the highest accuracy of about 99.5%. The intended application will be helpful for the visually impaired, child, and ignorant to recognize the Bangladeshi fish.
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CNN建模识别本地鱼类
就机器视觉而言,鱼类自动识别是一个具有挑战性的问题。无论如何,在孟加拉国没有可以识别鱼并处理理解的机械装置。本文研究了基于深度学习的多图像分类的鱼类识别方法。对于图像处理和分类,本工作使用了TensorFlow Keras库。最著名的图像识别深度学习模型卷积神经网络(CNN)被用来评估我们工作的可靠性。我们实现了三个定制的CNN模型,看看哪一个表现最好。为了找到最有效的模型,采用了超参数整定技术。我们仔细观察了参数矩阵和性能,以找到最佳模型。之后,M2模型被选择用于现实生活中的预测,因为它产生了99.5%左右的最高准确率。预期的应用程序将有助于视障人士,儿童和无知的人识别孟加拉国鱼。
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