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Fine-grained image classification with factorized deep user click feature

机译:精细的图像分类和深度用户点击功能

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摘要

The advantages of user click data greatly inspire its wide application in fine-grained image classification tasks. In previous click data based image classification approaches, each image is represented as a click frequency vector on a pre-defined query/word dictionary. However, this approach not only introduces high-dimensional issues, but also ignores the part of speech (POS) of a specific word as well as the word correlations. To address these issues, we devise the factorized deep click features to represent images. We first represent images as the factorized TF-IDF click feature vectors to discover word correlation, wherein several word dictionaries of different POS are constructed. Afterwards, we learn an end-to-end deep neural network on click feature tensors built on these factorized TF-IDF vectors. We evaluate our approach on the public Clickture-Dog dataset. It shows that: 1) the deep click feature learned on click tensor performs much better than traditional click frequency vectors; and 2) compared with many state-of-the-art textual representations, the proposed deep click feature is more discriminative and with higher classification accuracies.
机译:用户点击数据的优点极大地激发了其在细粒度图像分类任务中的广泛应用。在基于先前点击数据的图像分类方法中,每个图像都表示为预定义查询/单词词典上的点击频率向量。但是,这种方法不仅引入了高维问题,而且还忽略了特定单词的词性(POS)以及单词相关性。为了解决这些问题,我们设计了分解式深度点击功能来表示图像。我们首先将图像表示为分解的TF-IDF单击特征向量以发现单词相关性,其中构建了不同POS的几个单词词典。之后,我们将学习基于这些分解的TF-IDF向量的点击特征张量的端到端深度神经网络。我们在公共Clickture-Dog数据集上评估我们的方法。它表明:1)在点击张量上学习的深度点击功能比传统的点击频率矢量要好得多;和2)与许多最新的文本表示形式相比,所提出的深度点击功能具有更高的判别力和更高的分类精度。

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