Feature Matching Performance of Compact Descriptors for Visual Search
2014
MPEG is currently developing a standard titled Compact Descriptors for Visual Search (CDVS) for descriptor extraction and compression. In this work, we report comprehensive patch-level experiments for a direct comparison of low bitrate descriptors for visual search. For evaluating different compression schemes, we propose a dataset of matching pairs of image patches from the MPEG-CDVS image-level data sets. We propose a greedy rate allocation scheme for distributing bits across different spatialbins of the SIFT descriptor. We study a scheme based on Entropy Constrained Vector Quantization and greedy rate allocation, which performs close to the performancebound for any compression scheme. Finally, we present extensive feature-level Receiver Operating Characteristic (ROC) comparisons for different compression schemes (VectorQuantization, Transform Coding, Lattice Coding) proposed during the MPEG-CDVS standardization process.
Keywords:
- Artificial intelligence
- Computer vision
- Visual search
- Receiver operating characteristic
- Transform coding
- Standardization
- Vector quantization
- Machine learning
- Feature extraction
- Greedy algorithm
- Computer science
- Scale-invariant feature transform
- Pattern recognition
- Coding (social sciences)
- Image retrieval
- Encoding (memory)
- Correction
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