Fine-grained Classification using Heterogeneous Web Data and Auxiliary Categories
Li Niu, Ashok Veeraraghavan, Ashu Sabharwal

TL;DR
This paper proposes a novel approach for fine-grained classification that leverages both noisy web data and auxiliary category knowledge, enhanced by textual information, to improve classification accuracy without extensive manual labeling.
Contribution
The paper introduces a joint framework that combines web data and auxiliary category knowledge using semantic and textual information for improved fine-grained classification.
Findings
Effective in utilizing noisy web data for training
Improves classification accuracy over existing zero-shot methods
Leverages textual information as privileged data
Abstract
Fine-grained classification remains a very challenging problem, because of the absence of well-labeled training data caused by the high cost of annotating a large number of fine-grained categories. In the extreme case, given a set of test categories without any well-labeled training data, the majority of existing works can be grouped into the following two research directions: 1) crawl noisy labeled web data for the test categories as training data, which is dubbed as webly supervised learning; 2) transfer the knowledge from auxiliary categories with well-labeled training data to the test categories, which corresponds to zero-shot learning setting. Nevertheless, the above two research directions still have critical issues to be addressed. For the first direction, web data have noisy labels and considerably different data distribution from test data. For the second direction, zero-shot…
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Taxonomy
TopicsDomain Adaptation and Few-Shot Learning · Text and Document Classification Technologies · Anomaly Detection Techniques and Applications
