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Published June 2014 | public
Book Section - Chapter

Similarity Comparisons for Interactive Fine-Grained Categorization

Abstract

Current human-in-the-loop fine-grained visual categorization systems depend on a predefined vocabulary of attributes and parts, usually determined by experts. In this work, we move away from that expert-driven and attribute-centric paradigm and present a novel interactive classification system that incorporates computer vision and perceptual similarity metrics in a unified framework. At test time, users are asked to judge relative similarity between a query image and various sets of images, these general queries do not require expert-defined terminology and are applicable to other domains and basic-level categories, enabling a flexible, efficient, and scalable system for fine-grained categorization with humans in the loop. Our system outperforms existing state-of-the-art systems for relevance feedback-based image retrieval as well as interactive classification, resulting in a reduction of up to 43% in the average number of questions needed to correctly classify an image.

Additional Information

© 2014 IEEE. The authors thank the reviewers for their helpful feedback. This work is supported by the Google Focused Research Award and the National Science Foundation Graduate Research Fellowship under Grant No. DGE0707423.

Additional details

Created:
August 20, 2023
Modified:
October 25, 2023