Optimization Research of Deep Learning Algorithms in Real-time Image Processing

Journal: Journal of Higher Education Research DOI: 10.32629/jher.v5i5.3065

Genjuan Ma, Yan Li

Communication University of China, Nanjing, Nanjing 210000, Jiangsu, China

Abstract

This paper studies the optimization method of deep learning algorithm in real-time image processing, focusing on the optimization strategies of model compression, hardware acceleration and data processing. Through these technologies, the reasoning speed of the image processing system is significantly improved, while the high accuracy of the model is maintained. The research shows that these optimization strategies have wide application potential in resource-constrained environments, providing efficient solutions for practical applications.

Keywords

real-time image processing; deep learning optimization

References

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Copyright © 2024 Genjuan Ma, Yan Li

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