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Inferring restaurant styles by mining crowd sourced photos from user-review websites

机译:通过挖掘人群来自用户评论网站的人群的群众绘制餐厅风格

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When looking for a restaurant online, user uploaded photos often give people an immediate and tangible impression about a restaurant. Due to their informativeness, such user contributed photos are leveraged by restaurant review websites to provide their users an intuitive and effective search experience. In this paper, we present a novel approach to inferring restaurant types or styles (ambiance, dish styles, suitability for different occasions) from user uploaded photos on user-review websites. To that end, we first collect a novel restaurant photo dataset associating the user contributed photos with the restaurant styles from TripAdvior. We then propose a deep multi-instance multi-label learning (MIML) framework to deal with the unique problem setting of the restaurant style classification task. We employ a two-step bootstrap strategy to train a multi-label convolutional neural network (CNN). The multi-label CNN is then used to compute the confidence scores of restaurant styles for all the images associated with a restaurant. The computed confidence scores are further used to train a final binary classifier for each restaurant style tag. Upon training, the styles of a restaurant can be profiled by analyzing restaurant photos with the trained multi-label CNN and SVM models. Experimental evaluation has demonstrated that our crowd sourcing-based approach can effectively infer the restaurant style when there are a sufficient number of user uploaded photos for a given restaurant.
机译:在在线寻找餐厅时,用户上传的照片通常会给人们对餐馆留下立即和有形的印象。由于他们的信息,这些用户贡献的照片是由餐厅评估网站利用的,以便为他们的用户提供直观和有效的搜索体验。在本文中,我们提出了一种新颖的方法来推断餐厅类型或风格(氛围,菜肴样式,适用于不同场合的适用性)从用户审查网站上的用户上传的照片。为此,我们首先收集一个新的餐厅照片数据集将用户与TripAdviro的餐厅风格相关联。然后,我们提出了一个深度多实例的多标签学习(MIML)框架来处理餐馆风格分类任务的独特问题。我们采用两步的引导策略来培训多标签卷积神经网络(CNN)。然后使用多标签CNN来计算与餐厅相关联的所有图像的餐馆风格的置信度分数。计算的置信度分数还用于训练每个餐馆样式标签的最终二进制分类器。在培训后,可以通过使用训练有素的多标签CNN和SVM型号分析餐厅照片来分析餐厅的风格。实验评估表明,我们的人群采购的方法可以有效推断出足够数量的用户上传照片,以便给定餐厅。

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