基于模式识别的数字图像识别算法研究

Shu-Feng Di
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引用次数: 0

摘要

本文研究并设计了基于模式识别的数字图像识别算法。特征向量包括基于主成分分析的四维特征向量、八维特征向量和二维特征向量。分类方法包括k近邻法、最小距离法和固定增量法。通过结合不同的特征向量和不同的分类方法,得到不同的分类结果。同时,比较了三种方法的优缺点和精度。结果表明,该方法具有精度高、对异常点不敏感、易于实现等优点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on Digital Image Recognition Algorithm Based on Pattern Recognition
This paper studies and designs digital image recognition algorithms based on pattern recognition. The feature vector includes four-dimensional feature vector, eight-dimensional feature vector and two-dimensional feature vector based on principal component analysis. The classification methods include K-nearest neighbor method, minimum distance method and fixed increment method. Through the combination of different feature vectors and different classification methods, different classification results are obtained. At the same time, the advantages, disadvantages and accuracy of three methods are compared. The results show that the K-nearest neighbor method has high accuracy, it is insensitive to abnormal points and easy to implement.
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