Detecting, Classifying, and Mapping Retail Storefronts Using Street-level Imagery

Shahin Sharifi Noorian, S. Qiu, A. Psyllidis, A. Bozzon, G. Houben
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引用次数: 11

Abstract

Up-to-date listings of retail stores and related building functions are challenging and costly to maintain. We introduce a novel method for automatically detecting, geo-locating, and classifying retail stores and related commercial functions, on the basis of storefronts extracted from street-level imagery. Specifically, we present a deep learning approach that takes storefronts from street-level imagery as input, and directly provides the geo-location and type of commercial function as output. Our method showed a recall of 89.05% and a precision of 88.22% on a real-world dataset of street-level images, which experimentally demonstrated that our approach achieves human-level accuracy while having a remarkable run-time efficiency compared to methods such as Faster Region-Convolutional Neural Networks (Faster R-CNN) and Single Shot Detector (SSD).
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使用街道级图像检测、分类和绘制零售店面
零售商店和相关建筑功能的最新列表具有挑战性,维护成本也很高。本文介绍了一种基于街道级图像提取的店面自动检测、地理定位和分类零售商店及其相关商业功能的新方法。具体来说,我们提出了一种深度学习方法,将街道级图像中的店面作为输入,并直接提供地理位置和商业功能类型作为输出。我们的方法在真实的街道图像数据集上显示了89.05%的召回率和88.22%的精度,实验表明,与Faster区域卷积神经网络(Faster R-CNN)和Single Shot Detector (SSD)等方法相比,我们的方法达到了人类水平的精度,同时具有显着的运行效率。
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