Research on Optimization Algorithm of Computer Vision Based on Deep Learning in Image Recognition
This project aims to improve the adaptive capability of the image recognition system. A new approach is proposed for the purpose of enhancing the precision and robust performance of image recognition by using convolutional neural networks. Firstly, multi-layer convolutions are employed to increase t...
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| Vydané v: | 2025 IEEE 5th International Conference on Electronic Technology, Communication and Information (ICETCI) s. 1337 - 1341 |
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| Jazyk: | English |
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IEEE
23.05.2025
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| Abstract | This project aims to improve the adaptive capability of the image recognition system. A new approach is proposed for the purpose of enhancing the precision and robust performance of image recognition by using convolutional neural networks. Firstly, multi-layer convolutions are employed to increase the capacity of image feature extraction, and an adaptive learning policy is applied to optimize the learning speed and weight. To overcome these issues such as bad picture quality and noise, the paper proposes to use the enhanced technique to enhance the performance of the model. The experiment indicates that the proposed method is more effective than other standard datasets in terms of precision of 10%, calculation efficiency of 15%, robust against noise and poor quality images. This algorithm can not only effectively improve image recognition accuracy, but also adapt to the needs of complex environments and images of different quality, and has strong practical application potential. Nevertheless, facing the challenges of larger data sets and real-time applications, the algorithm still has room for improvement in computing resources and real-time processing capabilities. |
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| AbstractList | This project aims to improve the adaptive capability of the image recognition system. A new approach is proposed for the purpose of enhancing the precision and robust performance of image recognition by using convolutional neural networks. Firstly, multi-layer convolutions are employed to increase the capacity of image feature extraction, and an adaptive learning policy is applied to optimize the learning speed and weight. To overcome these issues such as bad picture quality and noise, the paper proposes to use the enhanced technique to enhance the performance of the model. The experiment indicates that the proposed method is more effective than other standard datasets in terms of precision of 10%, calculation efficiency of 15%, robust against noise and poor quality images. This algorithm can not only effectively improve image recognition accuracy, but also adapt to the needs of complex environments and images of different quality, and has strong practical application potential. Nevertheless, facing the challenges of larger data sets and real-time applications, the algorithm still has room for improvement in computing resources and real-time processing capabilities. |
| Author | Dekun, Xian |
| Author_xml | – sequence: 1 givenname: Xian surname: Dekun fullname: Dekun, Xian email: 12400024@qq.com organization: Guangdong Business and Technology University,Zhaoqing,China,526000 |
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| PublicationTitle | 2025 IEEE 5th International Conference on Electronic Technology, Communication and Information (ICETCI) |
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| Snippet | This project aims to improve the adaptive capability of the image recognition system. A new approach is proposed for the purpose of enhancing the precision and... |
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| StartPage | 1337 |
| SubjectTerms | Accuracy adaptive optimization Adaptive systems CNN Computer vision Convolutional neural networks Deep learning image enhancement Image recognition Noise Optimization Real-time systems Transfer learning |
| Title | Research on Optimization Algorithm of Computer Vision Based on Deep Learning in Image Recognition |
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