Abstract

The visual sensor network (VSN), a new type of wireless sensor network composed of low-cost wireless camera nodes, is being applied for numerous complex visual analyses in wild environments, such as visual surveillance, object recognition, etc. However, the captured images/videos are often low resolution with noise. Such visual data cannot be directly delivered to the advanced visual analysis. In this paper, we propose a joint-prior image super-resolution (JPISR) method using expectation maximization (EM) algorithm to improve VSN image quality. Unlike conventional methods that only focus on upscaling images, JPISR alternatively solves upscaling mapping and denoising in the E-step and M-step. To meet the requirement of the M-step, we introduce a novel non-local group-sparsity image filtering method to learn the explicit prior and induce the geometric duality between images to learn the implicit prior. The EM algorithm inherently combines the explicit prior and implicit prior by joint learning. Moreover, JPISR does not rely on large external datasets for training, which is much more practical in a VSN. Extensive experiments show that JPISR outperforms five state-of-the-art methods in terms of both PSNR, SSIM and visual perception.

Highlights

  • A large or small visual sensor network (VSN) depending on spatially-distributed smart cameras is for sensing, communicating and fusing images of a scene from varied viewpoints

  • high resolution (HR) image estimation method for the M-step, where the explicit prior serves as the likelihood estimation, and the implicit prior is regarded as the Bayesian prior estimation; in which we introduce a novel adaptive non-local group-sparsity image filtering method for likelihood estimation to adequately mine the explicit prior

  • We evaluate the results of various methods both visually and qualitatively in peak signal to noise ratio (PSNR) and structural similarity index measurement (SSIM)

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Summary

Introduction

A large or small visual sensor network (VSN) depending on spatially-distributed smart cameras is for sensing, communicating and fusing images of a scene from varied viewpoints. We propose a joint-prior image super-resolution (JPISR) method using the expectation maximization (EM) algorithm for image quality improvement in a VSN. This EM algorithm alternatively solves upscaling mapping and denoising in the E-step and M-step. In the M-step procedure, the novel adaptive non-local group-sparsity explicit prior serves as the likelihood estimation, and the geometric duality implicit prior is regard as the Bayesian prior estimation They are effectively integrated into one framework by maximum a posteriori (MAP).

Related Works
Problem Formulation
E-Step
M-Step
HR Image Estimation via Maximum A Posterior
Non-Local Group-Sparsity Explicit Prior Learning
Geometric Duality Implicit Prior Learning
Improving Similar Patches Match by Introducing Rotation Invariance
Experiment Results and Discussion
Experimental Configuration
Comparison with Six Super-Resolution Algorithms
Comparison on Noisy Images
Comparison of Data Size with PSNR
Conclusions
Full Text
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