Abstract
A novel self-organizing map (SOM) based retrieval system is proposed for performing face matching in large database. The proposed system provides a small subset of faces that are most similar to a given query face, from which user can easily verify the matched images. The architecture of the proposed system consists of two major parts. First, the system provides a generalized integration of multiple feature-sets using multiple self-organizing maps. Multiple feature-sets are obtained from different feature extraction methods like Gabor filter, Local Autocorrelation Coefficients, etc. In this platform, multiple facial features are integrated to form a compressed feature vector without concerning scaling and length of individual feature set. Second, an SOM is trained to organize all the face images in a database through using the compressed feature vector. Using the organized map, similar faces to a query can be efficiently identified. Furthermore, the system includes a relevance feedback to enhance the face retrieval performance. The proposed method is computationally efficient. Comparative results show that the proposed approach is promising for identifying face in a given large image database. © Springer 2006.
| Original language | English |
|---|---|
| Pages (from-to) | 305-323 |
| Journal | Neural Processing Letters |
| Volume | 23 |
| Issue number | 3 |
| DOIs | |
| Publication status | Published - Jun 2006 |
Research Keywords
- Face matching
- Feature integration
- Relevance feedback
- Self-organizing map
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