ABSTRACT
Several querying interfaces for content-based image retrieval (CBIR) are reviewed and a new CBIR system is introduced that uses Hierarchical Temporal Memory for the automatic indexing of architectural images and provides a sketch-based and iconic index querying interface. Experimentation shows the system is robust for recognizing query images under varying amounts of noise, distortion, occlusion, blurring, and affine transformation.
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Index Terms
- Content-based image retrieval using hierarchical temporal memory
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