Abstract

Salient object perception is the process of sensing the salient information from the spatio-temporal visual scenes, which is a rapid pre-attention mechanism for the target location in a visual smart sensor. In recent decades, many successful models of visual saliency perception have been proposed to simulate the pre-attention behavior. Since most of the methods usually need some ad hoc parameters or high-cost preprocessing, they are difficult to rapidly detect salient object or be implemented by computing parallelism in a smart sensor. In this paper, we propose a novel spatio-temporal saliency perception method based on spatio-temporal hypercomplex spectral contrast (HSC). Firstly, the proposed HSC algorithm represent the features in the HSV (hue, saturation and value) color space and features of motion by a hypercomplex number. Secondly, the spatio-temporal salient objects are efficiently detected by hypercomplex Fourier spectral contrast in parallel. Finally, our saliency perception model also incorporates with the non-uniform sampling, which is a common phenomenon of human vision that directs visual attention to the logarithmic center of the image/video in natural scenes. The experimental results on the public saliency perception datasets demonstrate the effectiveness of the proposed approach compared to eleven state-of-the-art approaches. In addition, we extend the proposed model to moving object extraction in dynamic scenes, and the proposed algorithm is superior to the traditional algorithms.

Highlights

  • Visual attention is an important cognitive mechanism of human survival

  • Based on the theories of [29,30] and the saliency detection methods of [1,13,25,26,27,28], we propose a computing parallelism algorithm named hypercomplex spectral contrast (HSC), considering both amplitude spectrum and phase spectrum in a multi-scale hypercomplex of HSV color space and motion feature: (1) In the frequency domain, amplitude spectrum and phase spectrum are both significant for saliency detection

  • We presented a spatio-temporal saliency perception method inspired by hypercomplex spectrum contrast and human visual perception

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Summary

Introduction

Visual attention is an important cognitive mechanism of human survival. Humans have the capability of rapidly focusing on potential objects in a cluttered visual world based on selective visual attention, which has been studied in physiology, psychology, neural systems and computer vision for a long time [1]. The top-down approach is a result of long-term visual simulation with prior knowledge. It is slow and task driven [10,11,12]. In contrast to the top-down method, the bottom-up approach is rapid and without prior knowledge It is a data contrast-driven mechanism in pre-attentive vision for salient objects without task [1,13,14,15,16,17,18,19,20,21,22,23,24,25,26,27,28]. We only focus on the bottom-up approach

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