Products recognition on shop-racks from local scale-invariant features

J. Zawistowski, Grzegorz Kurzejamski, P. Garbat, Jacek Naruniec
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Abstract

This paper presents a system designed for the multi-object detection purposes and adjusted for the application of product search on the market shelves. System uses well known binary keypoint detection algorithms for finding characteristic points in the image. One of the main idea is object recognition based on Implicit Shape Model method. Authors of the article proposed many improvements of the algorithm. Originally fiducial points are matched with a very simple function. This leads to the limitations in the number of objects parts being success- fully separated, while various methods of classification may be validated in order to achieve higher performance. Such an extension implies research on training procedure able to deal with many objects categories. Proposed solution opens a new possibilities for many algorithms demanding fast and robust multi-object recognition.
基于局部尺度不变特征的货架产品识别
本文提出了一个针对市场货架上的产品搜索应用而设计的多目标检测系统。系统使用众所周知的二进制关键点检测算法来寻找图像中的特征点。其中一个主要思想是基于隐式形状模型的目标识别方法。本文作者对该算法提出了许多改进。原来的基准点是用一个非常简单的函数来匹配的。这导致成功分离的对象部件的数量受到限制,而为了实现更高的性能,可以验证各种分类方法。这种扩展意味着研究能够处理多对象类别的训练过程。该方法为许多要求快速、鲁棒的多目标识别算法开辟了新的可能性。
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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