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Robust Shelf Monitoring Using Supervised Learning for Improving On-Shelf Availability in Retail Stores

机译:使用监督学习进行可靠的货架监控以提高零售店的货架可用性

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摘要

This paper proposes a method to robustly monitor shelves in retail stores using supervised learning for improving on-shelf availability. To ensure high on-shelf availability, which is a key factor for improving profits in retail stores, we focus on understanding changes in products regarding increases/decreases in product amounts on the shelves. Our method first detects changed regions of products in an image by using background subtraction followed by moving object removal. It then classifies the detected change regions into several classes representing the actual changes on the shelves, such as “product taken (decrease)” and “product replenished/returned (increase)”, by supervised learning using convolutional neural networks. It finally updates the shelf condition representing the presence/absence of products using classification results and computes the product amount visible in the image as on-shelf availability using the updated shelf condition. Three experiments were conducted using two videos captured from a surveillance camera on the ceiling in a real store. Results of the first and second experiments show the effectiveness of the product change classification in our method. Results of the third experiment show that our method achieves a success rate of 89.6% for on-shelf availability when an error margin is within one product. With high accuracy, store clerks can maintain high on-shelf availability, enabling retail stores to increase profits.
机译:本文提出了一种使用监督学习来提高货架可用性的,对零售商店货架进行有力监控的方法。为了确保高货架可用性,这是提高零售商店利润的关键因素,我们专注于了解货架上产品数量增加/减少的产品变化。我们的方法首先通过使用背景减法然后移动对象去除来检测图像中产品的变化区域。然后,通过使用卷积神经网络进行监督学习,将检测到的变化区域分为代表货架上实际变化的几类,例如“已提取产品(减少)”和“产品补充/退回(增加)”。最后,它使用分类结果更新表示产品存在/不存在的货架条件,并使用更新后的货架条件计算图像中可见的产品数量,以作为货架上的可用性。使用真实商店天花板上的监控摄像头拍摄的两个视频进行了三个实验。第一次和第二次实验的结果显示了我们方法中产品变更分类的有效性。第三个实验的结果表明,当误差范围在一个产品之内时,我们的方法在货架上可获得的成功率达到89.6%。店员的准确性很高,可以保持较高的货架可用性,从而使零售店能够增加利润。

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