基于图像的产品计数及其在机器人零售库存评估中的应用

N. Kejriwal, Sourav Garg, S. Kumar
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引用次数: 26

摘要

在本文中,我们提出了一种新的方法,直接从使用安装在移动机器人上的单目相机记录的图像中获得产品计数。这在基于机器人的零售库存评估问题中有应用,其中移动机器人用于监控零售商店货架上的库存水平。通过在模板特征空间中使用k-d树进行最近邻搜索来识别产品。与目前仅提供近似库存水平的方法不同,我们提出了一种可以计算给定图像中可见的离散产品的确切数量的方法。通过在每个产品周围拟合边界框并依次从图像中移除它们来获得产品计数。在每个被检测产品的邻域中进行第二阶段的网格搜索,以检测出在前一步中遗漏的新产品。这种检测基于包括直方图匹配和空间位置等各种信息的置信度度量。通过机器人相机和手机相机在不同数据集上的实验,验证了该方法的有效性。这些结果表明,基于机器人的零售库存评估可能成为目前流行的手动进行这些调查模式的可行替代方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Product counting using images with application to robot-based retail stock assessment
In this paper, we propose a novel method for obtaining product count directly from images recorded using a monocular camera mounted on a mobile robot. This has application in robot-based retail stock assessment problem where a mobile robot is used for monitoring the stock levels on the shelves of a retail store. The products are recognized by carrying out a nearest-neighbor search in the template feature space using a k-d tree. Unlike current approaches which only provide approximate stock level, we propose a method which can compute the exact number of discrete products visible in a given image. The product count is obtained by fitting bounding box around each product and removing them sequentially from the image. A second stage of grid-based search is carried out in the neighborhood of each detected product to detect new products which were missed out in the previous step. This detection is based on a confidence measure that includes various information such as histogram matching and spatial location. The efficacy of the proposed approach is demonstrated through experiments on different datasets obtained using robot camera as well as mobile phone camera. These results show that the robot-based retail stock assessment may become a viable alternative to the currently prevailing manual mode of carrying out these surveys.
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