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Recognition and Classification of Ornamental Fish Image Based on Machine Vision

机译:基于机器视觉的观赏鱼图像识别与分类

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With the gradual maturity of smart home technology, it requires a lot of knowledge and experience to judge the life state of ornamental fish artificially when raising them in a traditional aquarium in a smart home environment. Obviously not everyone can accurately judge the life state of ornamental fish. Accurate judgment, therefore, ornamental fish life state and timely feedback is essential for pet fish. Aiming at the actual need of intelligent feeding of traditional ornamental fish, an application of image recognition and classification of ornamental fish based on machine vision was designed. The fish classification model based on Convolutional Neural Network (CNN) is studied, and based on the model, the training of ornamental fish classification model is further realized by combining migration learning. The experiment used TensorFlow to train the network model. The experimental results show that the recognition accuracy of ornamental fish can reach 98.1% by using this method, and the corresponding knowledge base and rule base are constructed by combining with the expert system, which effectively solves the problem of insufficient knowledge and experience in artificial feeding of ornamental fish.
机译:随着智能家居技术的逐步成熟,它需要很多知识和经验来裁判在智能家居环境中的传统水族馆中抬起它们时判断观赏鱼的生命状态。显然不是每个人都可以准确地判断观赏鱼的生命状态。因此,准确的判断,观赏鱼类生活状态和及时反馈对于宠物鱼至关重要。设计了对传统观赏鱼智能喂养的实际需要,设计了基于机器视觉的观赏鱼的图像识别和分类。研究了基于卷积神经网络(CNN)的鱼类分类模型,并基于模型,通过组合迁移学习进一步实现了观赏鱼分类模型的训练。实验使用了Tensorflow来训练网络模型。实验结果表明,通过使用该方法,观赏鱼的识别准确性可以达到98.1%,并通过与专家系统相结合构建相应的知识库和规则基础,从而有效解决了人工喂养的知识和经验的问题观赏鱼。

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