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Bikers Are Like Tobacco Shops, Formal Dressers Are Like Suits: Recognizing Urban Tribes with Caffe

机译:骑自行车的人就像烟草店,正式的梳妆台就像西装:用咖啡辨识城市部落

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Recognition of social styles of people is an interesting but relatively unexplored task. Recognizing "style" appears to be a quite different problem than categorization, it is like recognizing a letter's font as opposed to recognizing the letter itself. Similar-looking things must be mapped to different categories. Hence a priori it would appear that features that are good for categorization should not be good for style recognition. Here we show this is not the case by starting with a convolutional deep network pre-trained on Image Net (Caffe), a categorization problem, and using the features as input to a classifier for urban tribes. Combining the results from individuals in group pictures and the group itself, with some fine-tuning of the network, we reduce the previous state of the art error by almost half, going from 46% recognition rate to 71%. To explore how the networks perform this task, we compute the mutual information between the Image Net output category activations and the urban tribe categories, and find, for example, that bikers are well categorized as whiptail lizards by Caffe, and that better recognized social groups have more highly-correlated Image Net categories. This gives us insight into the features useful for categorizing urban tribes.
机译:认识人们的社交风格是一项有趣的但相对未开发的任务。识别“样式”似乎是与分类完全不同的问题,就像识别字母的字体而不是识别字母本身一样。外观相似的事物必须映射到不同的类别。因此,先验地看来,有利于分类的特征不应对样式识别有利。在这里,我们从在图像网络(Caffe)上预先训练的卷积深度网络开始,这是一个分类问题,然后使用这些特征作为城市部落分类器的输入来显示情况并非如此。将小组图片中的个人结果与小组本身相结合,并对网络进行一些微调,我们将先前的最新技术错误减少了将近一半,从46%的识别率降低到71%。为了探索网络如何执行此任务,我们计算了Image Net输出类别激活和城市部落类别之间的相互信息,例如,发现Caffe将骑自行车的人归类为鞭尾蜥蜴,并发现了公认更好的社会群体具有更多高度相关的Image Net类别。这使我们能够洞悉可用于对城市部落进行分类的功能。

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