Abstract :
In visual recognition tasks, the design of low level image feature representation is fundamental. The advent of local patch features from pixel attributes such as SIFT and LBP, has precipitated dramatic progresses. Recently, a kernel view of these features, called kernel descriptors (KDES), generalizes the feature design in an unsupervised fashion and yields impressive results. In this paper, we present a supervised framework to embed the image level label information into the design of patch level kernel descriptors, which we call supervised kernel descriptors (SKDES). Specifically, we adopt the broadly applied bag-of-words (BOW) image classification pipeline and a large margin criterion to learn the low-level patch representation, which makes the patch features much more compact and achieve better discriminative ability than KDES. With this method, we achieve competitive results over several public datasets comparing with state-of-the-art methods.
Keywords :
image classification; image recognition; image representation; learning (artificial intelligence); BOW image classification pipeline; SKDES; bag-of-words; image level label information; lowlevel patch representation; margin criterion; patch level kernel descriptors; public datasets; supervised kernel descriptors; visual recognition; Accuracy; Dictionaries; Encoding; Image recognition; Kernel; Training; Vectors;