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The Latest News, Articles, and Events in Signal Processing

May 1, 2021
Website: TBA

August 1-December 31, 2021
Website: TBA

September 1, 2021
Website: TBA

April 26-May 2, 2021
Website: TBA

June 24-28, 2021
Registration Deadline: May 30, 2021

September 13-17, 2021
Registration Deadline: August 31, 2021
Location: VIRTUAL

Lecture Date: March 22, 2021
Chapter: Jordan
Chapter Chair: Sami Aldalahmeh
Topics: Deep Learning: A Signal Processing Perspective

September 20-23, 2021
Location: Note: Location changed to--Virtual Conference

IEEE Journal of Selected Topics in Signal Processing

Image restoration remains a challenging task in image processing. Numerous methods tackle this problem, which is often solved by minimizing a nonsmooth penalized co-log-likelihood function. Although the solution is easily interpretable with theoretic guarantees, its estimation relies on an optimization process that can take time. Considering the research effort in deep learning for image classification and segmentation, this class of methods offers a serious alternative to perform image restoration but stays challenging to solve inverse problems.

IEEE Journal of Selected Topics in Signal Processing

Image restoration is a critical component of image processing pipelines and for low-level computer vision tasks. Conventional image restoration approaches are mostly based on hand-crafted image priors. The inter-channel correlation of color images is not fully exploited. Motivated by the special characteristics of the inter-channel correlation (higher correlation for red/green and green/blue channels than for red/blue) in color images and general characteristics (green channel always shows the best image quality among the three color components) of distorted color images, in this paper, a three-stage convolutional neural network (CNN) structure is proposed for color image restoration tasks.

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