Re-ranking for Writer Identification and Writer Retrieval (2007.07101v1)
Abstract: Automatic writer identification is a common problem in document analysis. State-of-the-art methods typically focus on the feature extraction step with traditional or deep-learning-based techniques. In retrieval problems, re-ranking is a commonly used technique to improve the results. Re-ranking refines an initial ranking result by using the knowledge contained in the ranked result, e. g., by exploiting nearest neighbor relations. To the best of our knowledge, re-ranking has not been used for writer identification/retrieval. A possible reason might be that publicly available benchmark datasets contain only few samples per writer which makes a re-ranking less promising. We show that a re-ranking step based on k-reciprocal nearest neighbor relationships is advantageous for writer identification, even if only a few samples per writer are available. We use these reciprocal relationships in two ways: encode them into new vectors, as originally proposed, or integrate them in terms of query-expansion. We show that both techniques outperform the baseline results in terms of mAP on three writer identification datasets.
- Simon Jordan (2 papers)
- Mathias Seuret (23 papers)
- Pavel Král (12 papers)
- Ladislav Lenc (9 papers)
- Jiří Martínek (4 papers)
- Barbara Wiermann (1 paper)
- Tobias Schwinger (1 paper)
- Andreas Maier (394 papers)
- Vincent Christlein (60 papers)