Abstract

Due to sharp changes in local brightness in high dynamic range scenes, fused images obtained by the traditional multi-exposure fusion methods usually have an unnatural appearance resulting from halo artifacts. In this paper, we propose a halo-free multi-exposure fusion method based on sparse representation of gradient features for high dynamic range imaging. First, we analyze the cause of halo artifacts. Since the range of local brightness changes in high dynamic scenes may be far wider than the dynamic range of an ordinary camera, there are some invalid, large-amplitude gradients in the multi-exposure source images, so halo artifacts are produced in the fused image. Subsequently, by analyzing the significance of the local sparse coefficient in a luminance gradient map, we construct a local gradient sparse descriptor to extract local details of source images. Then, as an activity level measurement in the fusion method, the local gradient sparse descriptor is used to extract image features and remove halo artifacts when the source images have sharp local changes in brightness. Experimental results show that the proposed method obtains state-of-the-art performance in subjective and objective evaluation, particularly in terms of effectively eliminating halo artifacts.

Highlights

  • There is abundant information about brightness and color in real natural scenes, and the dynamic range is very wide

  • The notion of this category is that real natural scenes can be captured with a stack of low dynamic range (LDR) images with different exposures, and an high dynamic range (HDR) image can be obtained by using the camera response function [7,8]

  • We propose a halo-free multi-exposure fusion method based on sparse representation of gradient features

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Summary

Introduction

There is abundant information about brightness and color in real natural scenes, and the dynamic range is very wide. Ma et al [13] proposed a multi-exposure fusion method, based on an effective structural path decomposition approach, which took account of the local and global characteristics of the source images and obtained better fused image quality. We propose a halo-free multi-exposure fusion method based on sparse representation of gradient features. By analyzing characteristics of the luminance gradient in multi-exposure source images, the cause of halo artifacts in the fused image is discussed. A new multi-exposure fusion method based on the local gradient sparse descriptor is proposed, fused image by restraining the invalid large-amplitude gradients. Pixels with larger contrast always have larger gradients, so the pixels with invalid large gradients inevitably take part in the image fusion process with larger weight, generating the halo artifacts.

Multi-Exposure Fusion via Sparse Representation of Gradient Features
Local Gradient Sparse Descriptor Extraction
Dictionary Learning in the Gradient Domain
Exposure Quality Extraction
Initial
Final Weight Map Estimation and Fusion
Experiment
Multi-exposure
Evaluation
Objective Evaluation
Method
Evaluation Using DIIVINE
Analysis of the Free Parameter
Methods
Computational Efficiency
Conclusions
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