Title :
Semi-supervised learning with kernel locality-constrained linear coding
Author :
Chang, Yao-Jen ; Chen, Tsuhan
Author_Institution :
Sch. of Electr. & Comput. Eng., Cornell Univ., Ithaca, NY, USA
Abstract :
Semi-supervised learning uses both labeled and unlabeled data for machine learning tasks. It´s especially useful in the scenarios where labeled data is very scarce or expensive to obtain. In this work, we present kernel LLC, the kernel locality-constrained linear coding within a data-dependent kernel space, for data representation. The data-dependent kernel captures the underlying data geometry on the ambient feature space. The kernel LLC further exploits the locality association among the data on its manifold. Promising results on both image classification and content-based image retrieval scenarios suggest kernel LLC to be a good candidate for data representation in semi-supervised learning.
Keywords :
content-based retrieval; data structures; geometry; image classification; image coding; image retrieval; learning (artificial intelligence); ambient feature space; content-based image retrieval; data geometry; data representation; data-dependent kernel space; image classification; kernel LLC; kernel locality-constrained linear coding; machine learning task; semisupervised learning; Clustering algorithms; Encoding; Image coding; Image retrieval; Kernel; Manifolds; Support vector machines; Semi-supervised learning; content-based image retrieval; manifold learning;
Conference_Titel :
Image Processing (ICIP), 2011 18th IEEE International Conference on
Conference_Location :
Brussels
Print_ISBN :
978-1-4577-1304-0
Electronic_ISBN :
1522-4880
DOI :
10.1109/ICIP.2011.6116286