Abstract

A key issue in saliency detection of the foggy images in the wild for human tracking is how to effectively define the less obvious salient objects, and the leading cause is that the contrast and resolution is reduced by the light scattering through fog particles. In this paper, to suppress the interference of the fog and acquire boundaries of salient objects more precisely, we present a novel saliency detection method for human tracking in the wild. In our method, a combination of object contour detection and salient object detection is introduced. The proposed model can not only maintain the object edge more precisely via object contour detection, but also ensure the integrity of salient objects, and finally obtain accurate saliency maps of objects. Firstly, the input image is transformed into HSV color space, and the amplitude spectrum (AS) of each color channel is adjusted to obtain the frequency domain (FD) saliency map. Then, the contrast of the local-global superpixel is calculated, and the saliency map of the spatial domain (SD) is obtained. We use Discrete Stationary Wavelet Transform (DSWT) to fuse the cues of the FD and SD. Finally, a fully convolutional encoder–decoder model is utilized to refine the contour of the salient objects. Experimental results demonstrate that the presented model can remove the influence of fog efficiently, and the performance is better than 16 state-of-the-art saliency models.

Highlights

  • There is great influence on the visibility of the human tracking in the wild under foggy environments on account of how dust particles suspend in the air

  • The key contributions of this paper are summarized below: (1) We compute the saliency map via a frequency-spatial fusion saliency model based on Discrete Stationary Wavelet Transform (DSWT). (2) This framework is further refined by a fully convolutional encoder-decoder model based on fully convolutional networks [32] and deconvolutional networks [33]

  • We present a high-efficiency model to handle the salient object detection of foggy images

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Summary

Introduction

There is great influence on the visibility of the human tracking in the wild under foggy environments on account of how dust particles suspend in the air. Image processing methods in foggy weather can be split into image enhancement and. Image restoration methods include Dark channel prior algorithm [8], Visual enhancement algorithms for uniform and non-uniform fog [9], and defogging algorithms based on deep learning [10]. The method of image restoration based on the physical model is mainly to explore the physical mechanism of images degraded by fog, and to establish a general foggy weather degradation model. (3) Image color distortion leads to visual features such as the edge of salient objects is disturbed to some extent. Due to the low-resolution and low-contrast characteristics of foggy images, traditional spatial or frequency-based saliency models have a poor performance under fog environment. As detection method of deep learning is added to enrich the edge information of the saliency map. Of the salient proposed salient objectmodel detection modelfoggy in single foggy image

Related
Saliency
Object Contour Detection
Proposed Saliency Detection Method
Imaging Model of Foggy Image
Effect of Foggy Distortion on Images
FD Based Algorithm
SD Based Algorithm
DSWT Based Image Fusion
Experiment Setup
Comparison and Analysis
Conclusions
Full Text
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