Visual Saliency aims to detect the most important regions of an image from a perceptual point of view. More in detail, the goal of Visual Saliency is to build a Saliency Map revealing the salient subset of a given image by analyzing bottom-up and top-down factors of Visual Attention. In this paper we proposed a new method for Saliency detection based on colour and scale analysis, extending our previous work based on SIFT spatial density inspection. We conducted several experiments to study the relationships between saliency methods and the object attention processes and we collected experimental data by tracking the eye movements of thirty viewers in the first three seconds of observation of several images. More precisely, we used a dataset that consists of images with an object in the foreground on an homogeneous background. We are interested in studying the performance of our saliency method with respect to the real fixation maps collected during the experiments. We compared the performances of our method with several state of the art methods with very encouraging results.

Exploiting Visual Saliency Algorithms for Object-Based Attention: A New Color and Scale-Based Approach, 2017.

Exploiting Visual Saliency Algorithms for Object-Based Attention: A New Color and Scale-Based Approach

Bruno, A.
;
2017-01-01

Abstract

Visual Saliency aims to detect the most important regions of an image from a perceptual point of view. More in detail, the goal of Visual Saliency is to build a Saliency Map revealing the salient subset of a given image by analyzing bottom-up and top-down factors of Visual Attention. In this paper we proposed a new method for Saliency detection based on colour and scale analysis, extending our previous work based on SIFT spatial density inspection. We conducted several experiments to study the relationships between saliency methods and the object attention processes and we collected experimental data by tracking the eye movements of thirty viewers in the first three seconds of observation of several images. More precisely, we used a dataset that consists of images with an object in the foreground on an homogeneous background. We are interested in studying the performance of our saliency method with respect to the real fixation maps collected during the experiments. We compared the performances of our method with several state of the art methods with very encouraging results.
Inglese
2017
https://link.springer.com/chapter/10.1007/978-3-319-68548-9_18
International Conference on Image Analysis and Processing - ICIAP 2017
2017
internazionale
contributo
Image Analysis and Processing - ICIAP 2017 . ICIAP 2017. Lecture Notes in Computer Science
191
201
978-3-319-68548-9
Switzerland
Springer, Cham
esperti anonimi
Online
Settore INF/01 - Informatica
3
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10808/50224
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