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控制工程期刊

《控制工程期刊》是一本关注控制工程领域最新进展的开源国际学术期刊。本刊采用开放获取模式,报道控制工程学科领域的最新科研成果,旨在反映学术前沿进展及水平,促进学术交流,为国内外该领域的学者、科研人员提供一个良好的交流平台,以推进控制工程理论、应用和技术的发展。本刊可接收中、英文稿件。但中文稿件要有详细的英文标题、作者、单位、摘要和关键词。初次投稿请按照稿件模板排版后在线投稿。录用稿件首先刊发在期刊网站上,然后由Ivy Publisher出版公司高质量…… 【更多】 《控制工程期刊》是一本关注控制工程领域最新进展的开源国际学术期刊。本刊采用开放获取模式,报道控制工程学科领域的最新科研成果,旨在反映学术前沿进展及水平,促进学术交流,为国内外该领域的学者、科研人员提供一个良好的交流平台,以推进控制工程理论、应用和技术的发展。

本刊可接收中、英文稿件。但中文稿件要有详细的英文标题、作者、单位、摘要和关键词。初次投稿请按照稿件模板排版后在线投稿。录用稿件首先刊发在期刊网站上,然后由Ivy Publisher出版公司高质量出版,面向全球公开发行。因此,要求来稿均不涉密,文责自负。

ISSN Print:2167-0196

ISSN Online:2167-020X

Email:sjce@ivypub.org

Website: http://www.ivypub.org/sjce

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Paper Infomation

Research on Image Recognition Using Deep Learning Techniques

Full Text(PDF, 54KB)

Author: Shuntao Tang, Wei Chen

Abstract: This study delves into the applications, challenges, and future directions of deep learning techniques in the field of image recognition. Deep learning, particularly Convolutional Neural Networks (CNNs), Recurrent Neural Networks (RNNs), and Generative Adversarial Networks (GANs), has become key to enhancing the precision and efficiency of image recognition. These models are capable of processing complex visual data, facilitating efficient feature extraction and image classification. However, acquiring and annotating high-quality, diverse datasets, addressing imbalances in datasets, and model training and optimization remain significant challenges in this domain. The paper proposes strategies for improving data augmentation, optimizing model architectures, and employing automated model optimization tools to address these challenges, while also emphasizing the importance of considering ethical issues in technological advancements. As technology continues to evolve, the application of deep learning in image recognition will further demonstrate its potent capability to solve complex problems, driving society towards more inclusive and diverse development.

Keywords: Deep Learning Techniques, Image Recognition, Convolutional Neural Networks, Recurrent Neural Networks, Generative Adversarial Networks

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