Title :
Scale-Less Feature-Spatial Matching
Author :
Chao Zhang ; Tingzhi Shen
Author_Institution :
Beijing Inst. of Technol., Beijing, China
Abstract :
In this paper, we improve the discriminability of the Scale-Less SIFT (SLS) descriptor, which is constructed without requiring scale estimation of interest points. We thereby avoid to find stable scales which are difficult to obtain in many cases. Scale-Less SIFT descriptors of interest points are represented as sets of SIFT descriptors at multiple scales. We construct the linear subspace as the geometric representation for sets of SIFT descriptors. Then an embedding representation is learned that combines the descriptor similarity across scales and the spatial arrangement in a unified Euclidean embedding space. The learned subspace are highly capable of capturing the scale-varying values of SIFT descriptors. Experiment results demonstrate significant improvements by our constructed descriptors over existing methods on standard benchmark datasets.
Keywords :
feature extraction; image matching; image representation; transforms; SLS descriptor; descriptor similarity; embedding representation learning; geometric representation; linear subspace; scaleless SIFT descriptor; scaleless feature-spatial matching; spatial arrangement; stable scales; unified Euclidean embedding space; Detectors; Feature extraction; Image coding; Kernel; Laplace equations; Symmetric matrices; Vectors;
Conference_Titel :
Digital Image Computing: Techniques and Applications (DICTA), 2013 International Conference on
Conference_Location :
Hobart, TAS
DOI :
10.1109/DICTA.2013.6691526