TL;DR
This paper introduces a weakly supervised network that detects discriminative parts of objects to improve fine-grained categorization without requiring detailed part annotations, achieving state-of-the-art results.
Contribution
We propose PartNet, a novel weakly supervised network with a Discretized Part Proposals module for effective local part detection in fine-grained categorization.
Findings
Achieves state-of-the-art performance on CUB-200-2011 without part annotations.
Effectively detects discriminative local parts for categorization.
Improves fine-grained classification accuracy on benchmark datasets.
Abstract
Fine-grained object categorization aims for distinguishing objects of subordinate categories that belong to the same entry-level object category. The task is challenging due to the facts that (1) training images with ground-truth labels are difficult to obtain, and (2) variations among different subordinate categories are subtle. It is well established that characterizing features of different subordinate categories are located on local parts of object instances. In fact, careful part annotations are available in many fine-grained categorization datasets. However, manually annotating object parts requires expertise, which is also difficult to generalize to new fine-grained categorization tasks. In this work, we propose a Weakly Supervised Part Detection Network (PartNet) that is able to detect discriminative local parts for use of fine-grained categorization. A vanilla PartNet builds on…
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