资源论文A Reverse Hierarchy Model for Predicting Eye Fixations

A Reverse Hierarchy Model for Predicting Eye Fixations

2019-12-16 | |  44 |   38 |   0

Abstract

A number of psychological and physiological evidences suggest that early visual attention works in a coarse-to-fifine way, which lays a basis for the reverse hierarchy theory (RHT). This theory states that attention propagates from the top level of the visual hierarchy that processes gist and abstract information of input, to the bottom level that processes local details. Inspired by the theory, we develop a computational model for saliency detection in images. First, the original image is downsampled to different scales to constitute a pyramid. Then, saliency on each layer is obtained by image super-resolution reconstruction from the layer above, which is defifined as unpredictability from this coarse-to-fifine reconstruction. Finally, saliency on each layer of the pyramid is fused into stochastic fifixations through a probabilistic model, where attention initiates from the top layer and propagates downward through the pyramid. Extensive experiments on two standard eye-tracking datasets show that the proposed method can achieve competitive results with state-of-the-art models

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