A denoising framework for 3D and 2D imaging techniques based on photon detection statistics

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作者
Vineela Chandra Dodda
Lakshmi Kuruguntla
Karthikeyan Elumalai
Sunil Chinnadurai
John T Sheridan
Inbarasan Muniraj
机构
[1] SRM University AP,Department of Electronics and Communication Engineering, School of Engineering and Applied Sciences
[2] University College Dublin,School of Electrical and Electronic Engineering, College of Architecture and Engineering
[3] Alliance University,LiFE Laboratory, Department of Electronics and Communication Engineering, Alliance College of Engineering and Design
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A method to capture three-dimensional (3D) objects image data under extremely low light level conditions, also known as Photon Counting Imaging (PCI), was reported. It is demonstrated that by combining a PCI system with computational integral imaging algorithms, a 3D scene reconstruction and recognition is possible. The resulting reconstructed 3D images often look degraded (due to the limited number of photons detected in a scene) and they, therefore, require the application of superior image restoration techniques to improve object recognition. Recently, Deep Learning (DL) frameworks have been shown to perform well when used for denoising processes. In this paper, for the first time, a fully unsupervised network (i.e., U-Net) is proposed to denoise the photon counted 3D sectional images. In conjunction with classical U-Net architecture, a skip block is used to extract meaningful patterns from the photons counted 3D images. The encoder and decoder blocks in the U-Net are connected with skip blocks in a symmetric manner. It is demonstrated that the proposed DL network performs better, in terms of peak signal-to-noise ratio, in comparison with the classical TV denoising algorithm.
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