Scale Saliency : a Novel Approach to Salient Feature and Scale Selection
نویسندگان
چکیده
This paper presents an overview of the Scale Saliency algorithm recently introduced in (10). Scale Saliency is a novel method for measuring the saliency of image regions and selecting optimal scales for their analysis. The model underlying the algorithm deems image regions salient if they are simultaneously unpredictable in some feature-space and over scale. The algorithm possesses a number of attractive properties: invariance to planar rotation, scaling, intensity shifts and translation; robustness to noise, changes in viewpoint, and intensity scalings. Moreover, the approach offers a more general model of feature saliency compared with conventional ones, such as those based on kernel convolution, for example wavelet analysis, since such techniques define saliency and scale only with respect to a particular set of basis morphologies. Finally, we present a generalised version of the original algorithm which is invariant to Affine transformations.
منابع مشابه
An analysis of the Scale Saliency algorithm
In this paper, we present an analysis of the theoretical underpinnings of the Scale Saliency algorithm recently introduced in (Kadir and Brady, 2001). Scale Saliency considers image regions salient if they are simultaneously unpredictable in some feature-space and over scale. The algorithm possesses a number of attractive properties: invariance to planar rotation, scaling, intensity shifts and ...
متن کاملA Saliency Detection Model via Fusing Extracted Low-level and High-level Features from an Image
Saliency regions attract more human’s attention than other regions in an image. Low- level and high-level features are utilized in saliency region detection. Low-level features contain primitive information such as color or texture while high-level features usually consider visual systems. Recently, some salient region detection methods have been proposed based on only low-level features or hig...
متن کاملSaliency Detection and Feature Matching for Image Trimming and Tracking in Active Video
We develop a new automatic Object of Interest detection method for image trimming and a novel tracking technique in active videos. Both applications consist of salient region detection and feature matching. We deploy a color-saliency weighted Probability-of-Boundary (cPoB) map to detect salient regions. Scale Space Image Pyramid (SSIP) feature matching is proposed for image trimming. An image p...
متن کاملA Novel Approach to Background Subtraction Using Visual Saliency Map
Generally human vision system searches for salient regions and movements in video scenes to lessen the search space and effort. Using visual saliency map for modelling gives important information for understanding in many applications. In this paper we present a simple method with low computation load using visual saliency map for background subtraction in video stream. The proposed technique i...
متن کاملSalient Object Detection by Lossless Feature Reflection
Salient object detection, which aims to identify and locate the most salient pixels or regions in images, has been attracting more and more interest due to its various real-world applications. However, this vision task is quite challenging, especially under complex image scenes. Inspired by the intrinsic reflection of natural images, in this paper we propose a novel feature learning framework f...
متن کامل