TransFloor: Transparent Floor Localization for Crowdsourcing Instant Delivery

Zhiqing Xie, Haiyong Luo, Xiaotian Zhang, Hao Xiong, Fang Zhao, Zhaohui Li, Qi Ye, Bojie Rong, Jiuchong Gao
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引用次数: 1

Abstract

Smart on-demand delivery services require accurate indoor localization to enhance the system-human synergy experience of couriers in complex multi-story malls and platform construction. Floor localization is an essential part of indoor positioning, which can provide floor/altitude data support for upper-level 3D indoor navigation services (e.g., delivery route planning) to improve delivery efficiency and optimize order dispatching strategies. We argue that due to label dependence and device dependence, the existing floor localization methods cannot be flexibly deployed on a large scale in numerous multi-story malls across the country, nor can they apply to all couriers/users on the platform. This paper proposes a novel self-evolving and user-transparent floor localization system named TransFloor , based on crowdsourcing delivery data (e.g., order status and sensors data) without additional label investment and specialized equipment constraints. TransFloor consists of an unsupervised barometer-based module– IOD-TKPD and an NLP-inspired Wi-Fi-based module– Wifi2Vec , and Self-Labeling is a perfect bridge between both to completely achieve label-free and device-independent floor positioning. In addition, TransFloor is designed as a lightweight plugin embedded into the platform without refactoring the existing architecture, and it has been deployed nationwide to adaptively launch real-time accurate 3D/floor positioning services for numerous crowdsourcing couriers. We evaluate TransFloor on real-world records from an instant delivery platform (involving 672,282 orders, 7,390 couriers, and 6,206
TransFloor:面向众包即时交付的透明地板定位
智能按需配送服务需要精确的室内定位,以增强复杂的多层商场和平台建设中快递员的系统-人协同体验。楼层定位是室内定位的重要组成部分,可以为上层3D室内导航服务(如配送路线规划)提供楼层/高度数据支持,提高配送效率,优化订单调度策略。我们认为,由于标签依赖和设备依赖,现有的楼层定位方法不能在全国众多的多层商场中大规模灵活部署,也不能适用于平台上的所有快递员/用户。本文提出了一种新的自进化和用户透明的地板定位系统TransFloor,该系统基于众包交付数据(如订单状态和传感器数据),不需要额外的标签投资和专用设备约束。TransFloor由一个基于无监督气压计的模块IOD-TKPD和一个基于nlp的基于wi - fi的模块Wifi2Vec组成,而Self-Labeling是两者之间的完美桥梁,可以完全实现无标签和设备无关的地板定位。此外,TransFloor被设计为一个轻量级插件嵌入平台,无需重构现有架构,并已在全国范围内部署,为众多众包快递员自适应推出实时准确的3D/楼层定位服务。我们根据即时交付平台的真实记录(涉及672,282份订单,7,390名快递员和6,206名快递员)对TransFloor进行评估
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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