基于HOG和词袋模型的产品识别算法

Zhang Taoning, Chen Enqing
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引用次数: 1

摘要

基于计算机视觉的产品快速检测与识别在无人零售、商品分拣等领域有着重要的应用。目前,传统的产品识别方法识别率不高,深度学习识别方法需要大规模训练,不能满足实时性要求。针对产品识别的需要,提出了一种将传统HOG检测与SIFT特征词袋模型相结合的产品识别算法。与传统的特征匹配产品识别方法相比,该算法具有识别率高、时间短的优点。测试结果表明,实时识别率可达98%。同时,该算法具有重量轻、便于携带等优点,可应用于无人零售或快递拣货等多种场合。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Product Recognition Algorithm Based on HOG and Bag of Words Model
The rapid detection and identification of products based on computer vision has important applications in the fields of unmanned retail and goods sorting. At present, the recognition rate of traditional product identification methods is not high, and the deep learning recognition method requires large-scale training and cannot meet real-time requirements. This paper proposes a product identification algorithm that combines traditional HOG detection with the SIFT feature-based bag of words model for the needs of product identification. Compared with the traditional product identification method for feature matching, the algorithm has the advantages of higher recognition rate and shorter time. The test results show that the real-time recognition rate can reach 98%. At the same time, the algorithm has the advantages of light weight and easy portability, and can be applied to many occasions such as unmanned retail or express picking.
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