SODRet: Instance retrieval using salient object detection for self-service shopping

Muhammad Umair Hassan , Xiuyang Zhao , Raheem Sarwar , Naif R. Aljohani , Ibrahim A. Hameed
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Abstract

Self-service shopping technologies have become commonplace in modern society. Although various innovative solutions have been adopted, there is still a gap in providing efficient services to consumers. Recent developments in mobile application technologies and internet-of-things devices promote information and knowledge dissemination by integrating innovative services to meet users’ needs. We argue that object retrieval applications can be used to provide effective online or self-service shopping. Therefore, to fill this technological void, this study aims to propose an object retrieval system using a fusion-based salient object detection (SOD) method. The SOD has attracted significant attention, and recently many heuristic computational models have been developed for object detection. It has been widely used in object detection and retrieval applications. This work proposes an instance retrieval system based on the SOD to find the objects from the commodity datasets. A prediction about the object’s position is made using the saliency detection system through a saliency model, and the proposed SOD-based retrieval (SODRet) framework uses saliency maps for retrieving the searched items. The method proposed in this work is evaluated on INSTRE and Flickr32 datasets. Our proposed work outperforms state-of-the-art object retrieval methods and can further be employed for large-scale self-service shopping-based points of sales.

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SODRet:利用突出对象检测进行实例检索,用于自助购物
自助购物技术在现代社会已变得司空见惯。虽然各种创新解决方案已被采用,但在为消费者提供高效服务方面仍存在差距。移动应用技术和物联网设备的最新发展通过整合创新服务来满足用户需求,从而促进了信息和知识的传播。我们认为,对象检索应用可用于提供有效的在线或自助购物服务。因此,为了填补这一技术空白,本研究旨在提出一种使用基于融合的突出对象检测(SOD)方法的对象检索系统。SOD 已经引起了广泛的关注,最近已经开发出了许多用于物体检测的启发式计算模型。它已被广泛应用于物体检测和检索领域。本作品提出了一种基于 SOD 的实例检索系统,用于从商品数据集中查找物体。通过一个突出度模型,使用突出度检测系统对物体的位置进行预测,而所提出的基于 SOD 的检索(SODRet)框架则使用突出度地图来检索所搜索的项目。本文提出的方法在 INSTRE 和 Flickr32 数据集上进行了评估。我们提出的方法优于最先进的物品检索方法,可进一步用于大规模自助购物销售点。
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Machine learning with applications
Machine learning with applications Management Science and Operations Research, Artificial Intelligence, Computer Science Applications
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98 days
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