Intelligent Recognition Translation Optimization Algorithm Based on Machine Vision

Ruichao Li
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引用次数: 0

Abstract

At this stage, machine vision (MV) technology is developing rapidly, and good results have been achieved in the fields of text recognition, image processing, and natural language processing. Intelligent recognition translation, as an efficient tool, can perform equivalent conversions between different languages, while still maintaining the original semantics, which has important practical significance. Based on this, the purpose of this article is to study the MV - based intelligent recognition translation optimization algorithm. This article proposes a text recognition method based entirely on convolutional neural networks, incorporates attention mechanism, introduces LSTM with "forgetting" function, and introduces the specific structure of a fully convolutional sequence decoder. This article designs an intelligent recognition and translation system, and introduces the end-to-end recognition and translation module. Experimental data shows that the BLUE values of the method in this paper are 25.57, 25.63, and 25.71, respectively. This shows that the method in this paper has a good effect in text recognition and translation.
基于机器视觉的智能识别翻译优化算法
现阶段,机器视觉(MV)技术发展迅速,在文本识别、图像处理、自然语言处理等领域都取得了较好的成果。智能识别翻译作为一种高效的翻译工具,能够在保持原语义的前提下进行不同语言之间的等效转换,具有重要的现实意义。基于此,本文的目的是研究基于MV的智能识别翻译优化算法。本文提出了一种完全基于卷积神经网络的文本识别方法,结合注意机制,引入具有“遗忘”功能的LSTM,并介绍了全卷积序列解码器的具体结构。本文设计了一个智能识别翻译系统,并介绍了端到端识别翻译模块。实验数据表明,本文方法的BLUE值分别为25.57、25.63和25.71。这表明本文方法在文本识别和翻译中具有良好的效果。
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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