Paper Title
Salient Region Detection Via Super Pixel, Histogram of Gradients
Abstract
Automatic salient object regions detection across images, without any prior information or knowledge of the
contentsof the corresponding images, enhances many computer vision and computer graphics applications.In the existing
paper consider feature based on global and local features, which complement each other to compute a saliency map.The
proposed approach automatically detects salient regions in an image dataset.The proposed algorithm based on applies super
pixel segmentation appearance model.To improve the performance of saliency map estimation, based on super pixels as
features algorithm to resolve the saliency estimation from a trimap via a learning-based algorithm.introduce a novel
technique to automatically detect salient regions of an image via high-dimensional color transform. Our main idea is to
represent a saliency map of an image as a linear combination of high-dimensional color space where salient regions and
backgrounds can be distinctively separated. This is based on an observation that salient regions often have distinctive colors
compared to the background in human perception, but human perception is often complicated and highly nonlinear. By
mapping a low dimensional RGB color to a feature vector in a high-dimensional color space, we show that we can linearly
separate the salient regions from the background by finding an optimal linear combination of color coefficients in the highdimensional
color space. Our high dimensional color space incorporates multiple color representations including RGB,
CIELab, HSV and with gamma corrections to enrich its representative power. The experimental results on different
benchmark datasets show that proposed approach is effective in comparison with the previous state-of-the-art saliency
estimation methods.
Keywords - Salient region detection, super pixel, trimap,histogram of gradients, color channels