Abstract

The multiview low dynamic range images captured with sparse camera arrangement under ill-lighting conditions contain highlighted and shadow regions due to over-exposed and under-exposed regions. The processing of these images produces contrast distortion, and it is challenging to maintain relative brightness with color consistency. Moreover, the disparity map estimation faces the challenges of holes and artifacts due to a wide baseline and poor visibility, with a shared view of vision. In this article, we propose a multiview ghost-free image enhancement strategy for in-the-wild images with unknown exposure and geometry. We address the complex geometric alignment problem for a wide variational baseline among multiple sparsely arranged cameras. The features among multiple viewpoints are detected and matched for the image restoration. The restored image contains highlighted and shadow regions with a color imbalance problem. We synthesize virtual images following the intensity mapping function, which compensates for the relative brightness and color distortions. Finally, we fuse all the images to obtain high-quality images. The proposed method is more frequent and feasible for future multiview systems with varying baselines without relying on disparity maps. The experimental results demonstrate that the proposed method outperformed the state-of-the-art approaches.

Highlights

  • High quality images are essential for many applications in image processing and computer vision

  • The advancement in display technology has paved the path for multiview capturing devices, and recent imaging system involves more than one cameras, comprising stereo and multiview camera systems (MVCs)

  • In this article, we proposed a method for the enhancement of ill-lit images captured with multiple sparsely arranged cameras

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Summary

INTRODUCTION

High quality images are essential for many applications in image processing and computer vision. The high dynamic range [1] (HDR) methods require multiple images with additional information (e.g., exposure time, ISO values) and prone to tone mapping artifacts. Classic HDR and exposure fusion methods are susceptible to motion artifacts that give rise to additional challenges of deghosting. It limits the performance of the associated systems, and challenges arise from the special visual and display applications. The general restoration based methods [11], [26], [27] are designed to enhance the contrast for underexposed regions and maintain the over-exposed regions at the same level These methods handle the single image and adaptive towards multiview low dynamic range imaging problems. Only one image is required for each viewpoint, where we solve the problem for standard photography to be more beneficial for future interactive visual application

RELATED WORK
MULTI EXPOSURE FUSION
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