Automatic Query Image Disambiguation for Content-Based Image Retrieval

November 02, 2017 Β· Entered Twilight Β· πŸ› VISIGRAPP

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Repo contents: .gitignore, LICENSE, README.md, aid.py, clue.py, common.py, eval_metrics.py, evaluate_query_disambiguation.py, extract_features.py, mirflickr, model, utils.py

Authors Bjârn Barz, Joachim Denzler arXiv ID 1711.00953 Category cs.CV: Computer Vision Cross-listed cs.IR Citations 1 Venue VISIGRAPP Repository https://github.com/cvjena/aid ⭐ 11 Last Checked 2 months ago
Abstract
Query images presented to content-based image retrieval systems often have various different interpretations, making it difficult to identify the search objective pursued by the user. We propose a technique for overcoming this ambiguity, while keeping the amount of required user interaction at a minimum. To achieve this, the neighborhood of the query image is divided into coherent clusters from which the user may choose the relevant ones. A novel feedback integration technique is then employed to re-rank the entire database with regard to both the user feedback and the original query. We evaluate our approach on the publicly available MIRFLICKR-25K dataset, where it leads to a relative improvement of average precision by 23% over the baseline retrieval, which does not distinguish between different image senses.
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