Classification and Identification of Domestic Catsbased on Deep Learning

Rui Zhang
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引用次数: 1

Abstract

In recent years, computer technology has developed very rapidly, and the hardware conditions are getting better and better. The time used to train deep neural networks has been greatly reduced. Deep learning is rapidly becoming an important hotspot of scientific research. Deep learning technology is widely used in digital recognition, speech recognition, unmanned driving, image recognition, and other fields [5]. The new generation of artificial intelligence technology represented by deep learning is gradually penetrating people's lives and promoting the development of society. As a representative of deep learning technology, the convolutional neural network has also developed rapidly in recent years. To improve the accuracy of cat breed classification and enable more people to clearly understand cat species, this paper cites and compares different deep learning models, and compares the performance of VGGNet, Inception-v3 and the optimized deep learning model in cat breed recognition. From the experimental results, the accuracy of the improved model is about 84%, which is higher than other models.
基于深度学习的家猫分类与识别
近年来,计算机技术发展非常迅速,硬件条件也越来越好。用于训练深度神经网络的时间已经大大减少。深度学习正迅速成为科学研究的一个重要热点。深度学习技术广泛应用于数字识别、语音识别、无人驾驶、图像识别等领域[5]。以深度学习为代表的新一代人工智能技术正逐步渗透到人们的生活中,推动着社会的发展。卷积神经网络作为深度学习技术的代表,近年来也得到了迅速发展。为了提高猫品种分类的准确性,让更多的人清楚地了解猫的种类,本文引用并比较了不同的深度学习模型,比较了VGGNet、Inception-v3和优化后的深度学习模型在猫品种识别中的性能。从实验结果来看,改进模型的准确率约为84%,高于其他模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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