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IncreACO: Incrementally Learned Automatic Check-out with Photorealistic Exemplar Augmentation

机译:ContreaCO:使用Photoremistic Impertar Augmentation逐步学习自动退房

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Automatic check-out (ACO) emerges as an integral component in recent self-service retailing stores, which aims at automatically detecting and counting the randomly placed products upon a check-out platform. Existing data-driven counting works still have difficulties in generalizing to real-world retail product counting scenarios, since (1) real check-out images are hard to collect or cover all products and their possible layouts, (2) rapid updating of the product list leads to frequent and tedious re-training of the counting models. To overcome these obstacles, we contribute a practical automatic check-out framework tailored to real-world retail product counting scenarios, consisting of a photorealistic exemplar augmentation to generate physically reliable and photorealistic check-out images from canonical exemplars scanned for each product and an incremental learning strategy to match the updating nature of the ACO system with much fewer training effort. Through comprehensive studies, we show that the proposed IncreACO serves as an effective framework on the recent Retail Product Checkout (RPC) dataset, where the proposed photorealistic exemplar augmentation remarkably improves the counting performance against the state-of-the-art methods (77.15% v.s. 72.83% in counting accuracy), whilst the proposed incremental learning framework consistently extends the counting performance to new categories.
机译:自动退房(ACO)作为最近的自助式零售店中作为一个整体组成部分,旨在自动检测和计算在退房平台上的随机放置的产品。现有的数据驱动计数工作仍然难以概括到现实世界零售产品计数方案,因为(1)实际签出图像很难收集或覆盖所有产品及其可能的布局,(2)产品的快速更新列表导致频繁和繁琐的重新培训计数模型。为了克服这些障碍,我们贡献了对现实世界零售产品计数场景量身定制的实用自动退房框架,该框架由光电静态示例的增强组成,以产生从针对每个产品扫描的规范示例的物理上可靠和黑色的签出图像和增量学习策略以匹配ACO系统的更新性质,具有更少的培训努力。通过综合研究,我们表明,拟议的Increaco是最近零售产品结账(RPC)数据集的有效框架,其中建议的光电型示例增强显着提高了最先进方法的计数性能(77.15%计数准确度的72.83%),虽然所提出的增量学习框架一致地将计数性能扩展到新类别。

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