Title :
CARD: Compact And Real-time Descriptors
Author :
Ambai, Mitsuru ; Yoshida, Yuichi
Author_Institution :
Denso IT Lab., Inc., Japan
Abstract :
We propose Compact And Real-time Descriptors (CARD) which can be computed very rapidly and be expressed by short binary codes. An efficient algorithm based on lookup tables is presented for extracting histograms of oriented gradients, which results in approximately 16 times faster computation time per descriptor than that of SIFT. Our lookup-table-based approach can handle arbitrary layouts of bins, such as the grid binning of SIFT and the log-polar binning of GLOH, thus yielding sufficient discrimination power. In addition, we introduce learning-based sparse hashing to convert the extracted descriptors to short binary codes. This conversion is achieved very rapidly by multiplying a very sparse integer weight matrix by the descriptors and aggregating signs of their multiplications. The weight matrix is optimized in a training phase so as to make Hamming distances between encoded training pairs reflect visual dissimilarities between them. Experimental results demonstrate that CARD outperforms previous methods in terms of both computation time and memory usage.
Keywords :
computer vision; cryptography; feature extraction; grid computing; real-time systems; sparse matrices; table lookup; CARD; GLOH; Hamming distance; SIFT; compact and real-time descriptor; grid binning; histogram extraction; learning-based sparse hashing; lookup-table-based approach; memory usage; short binary code; sparse integer weight matrix; training pair encoding; training phase; visual dissimilarity; Arrays; Binary codes; Histograms; Interpolation; Real time systems; Sparse matrices; Training;
Conference_Titel :
Computer Vision (ICCV), 2011 IEEE International Conference on
Conference_Location :
Barcelona
Print_ISBN :
978-1-4577-1101-5
DOI :
10.1109/ICCV.2011.6126230