[visionlist] Sensors special issue on Sensors and Deep Learning for Digital Image Processing

Emre Celebi ecelebi at uca.edu
Mon Apr 27 10:08:48 -04 2020

Dear Colleagues,

Recently, deep learning has triggered a revolution in image processing and
computer vision as it allows computational models of multiple layers to
learn and represent data by imitating how the brain perceives and
understands multimodal information. In recent years, deep learning methods
have outperformed conventional machine learning techniques in many
application areas including image enhancement, image segmentation, object
detection, object recognition, scene understanding, image synthesis,
healthcare and visual recognition, among many others.

We would like to invite the academic and industrial research community to
submit original research as well as review articles to this special issue
of the Sensors journal (impact factor = 3.031). Topics of interest include:

 + Learning and Adaptive Sensor Fusion
 + Multisensor Data Fusion
 + Emerging Trends in Deep Learning Techniques
 + Intelligent Measurement Systems
 + Analysis of Image Sensor Data
 + Data Augmentation Techniques
 + Image Classification, Image Clustering, Object Detection, Object
Localization, Object Detection, Image Segmentation, Image Compression
 + Interpolation, Denoising, Deblurring, Dehazing, Inpainting and
 + Deep Learning Architectures for Remote Sensing
 + Image Quality Assessment
 + Deep Learning-Based Biometrics
 + Human/Machine Smart Interfaces
 + Industrial Applications
 + 3D Point Cloud Measurement and Processing
 + Image Synthesis

Deadline for manuscript submissions: 31 March 2021.

For submission details, please visit:

Guest Editors

Prof. Dr. Bogdan Smolka (Silesian University of Technology, Poland)
Prof. Dr. M. Emre Celebi (University of Central Arkansas, USA)
Prof. Dr. Takahiko Horiuchi (Chiba University, Japan)
Prof. Dr. Gianluigi Ciocca (University of Milano-Bicocca, Italy)
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