CVSep 2, 2018

Learning to Navigate for Fine-grained Classification

arXiv:1809.00287v1486 citations
Originality Highly original
AI Analysis

This addresses the problem of finding discriminative features in fine-grained classification for computer vision applications, representing a novel method rather than an incremental improvement.

The paper tackles fine-grained classification by proposing a self-supervision mechanism to localize informative regions without annotations, achieving state-of-the-art performance on benchmark datasets.

Fine-grained classification is challenging due to the difficulty of finding discriminative features. Finding those subtle traits that fully characterize the object is not straightforward. To handle this circumstance, we propose a novel self-supervision mechanism to effectively localize informative regions without the need of bounding-box/part annotations. Our model, termed NTS-Net for Navigator-Teacher-Scrutinizer Network, consists of a Navigator agent, a Teacher agent and a Scrutinizer agent. In consideration of intrinsic consistency between informativeness of the regions and their probability being ground-truth class, we design a novel training paradigm, which enables Navigator to detect most informative regions under the guidance from Teacher. After that, the Scrutinizer scrutinizes the proposed regions from Navigator and makes predictions. Our model can be viewed as a multi-agent cooperation, wherein agents benefit from each other, and make progress together. NTS-Net can be trained end-to-end, while provides accurate fine-grained classification predictions as well as highly informative regions during inference. We achieve state-of-the-art performance in extensive benchmark datasets.

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