基于深度学习的干鱼分类

Marfi Akter Laboni, Iffat Firozy Rimi, Shrabosty Deb, Farhina Afrin, M. Hena
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摘要

鱼干是世界各地保存鱼类的重要工序。干鱼被认为是许多孟加拉国人菜单上的首选食物。在欧洲和亚洲,干鱼也被认为是世界上许多地方人们膳食中维生素、矿物质和蛋白质的适当来源。孟加拉国现在是亚洲第五大内河鱼类来源地,仅次于中国和印度(2020-2021年)。干鱼主要是由渔民捕获的咸水鱼制成,经过许多步骤的交易,在全国各地销售,最终到达客户手中。于是就有许多年轻人和商人从事鱼干贸易。对于新手、商人和其他想从事这项业务的人来说,观察到这一点是非常重要的;哪种类型的鱼干燥会根据市场价值和更容易和低成本的干燥方法获利。这张纸可以帮助渔民、商人和普通市民识别各种类型的干鱼。该数据集包含Bashpata、Chanda、Chapila、Chingri、Chouka、Dhela、Fesha、Ilish、Kachki、Loitta、Maya、Puti、Shundori和Tengra等本地识别的干鱼。我们收集了该数据集的一些图片,然后对该数据集进行分割和扩充,该模型是一个训练好的基于深度学习和卷积神经网络(CNN)的鱼干分类模型。该模型的准确率为97.72%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dried Fish Classification Using Deep Learning
Dried fish is a great procedure for fish reservation all over the world. Dried fish is evaluated as a choice food on the menu for a large number of Bangladeshi people. Dried fish is also considered as a proper origin of vitamins, minerals, and protein in the meal of people in numerous portion of the world along with Europe and Asia. Bangladesh is now the Asia’s fifth source of inland water fish, after only China and India (2020-2021). Dried fish is mostly produced from saltwater fishes captured by the fisherman and put up for sale all over the country by many steps of trading to arrive the customer. Thus lots of fresher men and businessmen engaging in the trading business of dried fish. It is very crucial for the fresher man, businessman, and others people who want to involve this business to observe that; which type of fish drying will be profitable according to the market value and easier and low-cost drying method. The paper can assist fishermen, businesspeople, and common citizens in identifying the many types of dried fish. This set of data contains locally cognized dried fish like Bashpata, Chanda, Chapila, Chingri, Chouka, Dhela, Fesha, Ilish, Kachki, Loitta, Maya, Puti, Shundori, and Tengra. Some pictures of this dataset are collected by us then we have segmented and then augmented this dataset, this model is a trained Deep Learning and Convolutional Neural Network (CNN) based model for classifying dried fish. The present model achieved an accuracy of 97.72%.
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