Machine Learning Techniques for Computer Vision—2nd Edition

A special issue of Future Internet (ISSN 1999-5903). This special issue belongs to the section "Internet of Things".

Deadline for manuscript submissions: 31 October 2026 | Viewed by 1178

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School of Information Science and Engineering, Lanzhou University, Lanzhou 730000, China
Interests: machine learning; pattern recognition; computer vision; bioinformatics
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Guest Editor
Department of Information Engineering, University of Brescia, Via Branze 38, 25121 Brescia, Italy
Interests: artificial intelligence; AI planning; multi-agent planning; machine learning; neural networks; deep learning; heuristic optimization; heuristic search
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Special Issue Information

Dear Colleagues,

Computer vision can be used to enhance the reliability of communications through wireless networks and to improve human–computer interaction. With the rapid development of machine learning techniques, research in computer vision has made significant progress in recent years. Deep learning methods have revolutionized numerous computer vision tasks, and techniques have been developed to process stationary images and the combination of video and audio input.

However, the “black box” nature of the deep learning model blocks its application to computer vision tasks for high-stakes decision making. Developing interpretable deep learning models is thus necessary in this application area. Many post hoc interpretability analysis methods have been developed to understand pre-trained models, and ad hoc interpretability modeling methods have also been developed, such as feature disentanglement and interpretable model extraction using mimic learning.

Similarly to large language models, transformer-based large language models have also been intensively used for tackling computer vision tasks. However, due to the high cost of data labeling in special application scenarios, self-supervised learning, few-shot learning, transfer learning, or other new machine learning techniques must be established to address the lack of labeled data.

In addition, applications in autonomous vehicles, augmented reality, and smart cities are driving the evolution of internet infrastructure for computer vision in profound ways. Autonomous vehicles require real-time data processing for navigation and decision making, relying on robust internet connectivity for updates and synchronization. Augmented reality applications demand high-bandwidth connections to stream immersive content seamlessly. Smart city initiatives leverage computer vision for traffic management, surveillance, and infrastructure monitoring, necessitating scalable networks to handle the influx of data. These applications are catalyzing advancements in internet infrastructure to support the growing demands of computer vision technologies in various domains.

The goal of this Special Issue is to provide a platform for researchers to share their new findings and ideas for computer vision tasks with the development of machine learning methods. Submissions may include reviews, surveys, or technical papers that are original and unpublished, with topic areas including, but not limited to, the following:

  • Computer vision for human–computer interaction;
  • Image processing on mobile devices;
  • Self-supervised learning for computer vision;
  • Few-shot learning for computer vision;
  • Transfer learning for computer vision;
  • Interpretable machine learning methods for computer vision;
  • Machine learning methods for image classification;
  • Machine learning methods for object detection;
  • Machine learning methods for semantic segmentation;
  • Machine learning methods for video processing;
  • Machine learning methods for action recognition;
  • Machine learning methods for anomaly detection;
  • Autonomous vehicles and computer vision;
  • Augmented reality and computer vision;
  • Smart cities and computer vision.

Prof. Dr. Yonggang Lu
Dr. Ivan Serina
Guest Editors

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Keywords

  • machine learning
  • computer vision
  • mobile devices
  • human–computer interaction
  • deep learning
  • image processing
  • video processing
  • few-shot learning
  • transfer learning
  • interpretability
  • image classification
  • object detection
  • semantic segmentation
  • action recognition
  • anomaly detection

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32 pages, 4599 KB  
Article
Adaptive Assistive Technologies for Learning Mexican Sign Language: Design of a Mobile Application with Computer Vision and Personalized Educational Interaction
by Carlos Hurtado-Sánchez, Ricardo Rosales Cisneros, José Ricardo Cárdenas-Valdez, Andrés Calvillo-Téllez and Everardo Inzunza-Gonzalez
Future Internet 2026, 18(1), 61; https://doi.org/10.3390/fi18010061 - 21 Jan 2026
Viewed by 888
Abstract
Integrating people with hearing disabilities into schools is one of the biggest problems that Latin American societies face. Mexican Sign Language (MSL) is the main language and culture of the deaf community in Mexico. However, its use in formal education is still limited [...] Read more.
Integrating people with hearing disabilities into schools is one of the biggest problems that Latin American societies face. Mexican Sign Language (MSL) is the main language and culture of the deaf community in Mexico. However, its use in formal education is still limited by structural inequalities, a lack of qualified interpreters, and a lack of technology that can support personalized instruction. This study outlines the conceptualization and development of a mobile application designed as an adaptive assistive technology for learning MSL, utilizing a combination of computer vision techniques, deep learning algorithms, and personalized pedagogical interaction. The suggested system uses convolutional neural networks (CNNs) and pose-estimation models to recognize hand gestures in real time with 95.7% accuracy. It then gives the learner instant feedback by changing the difficulty level. A dynamic learning engine automatically changes the level of difficulty based on how well the learner is doing, which helps them learn signs and phrases over time. The Scrum agile methodology was used during the development process. This meant that educators, linguists, and members of the deaf community all worked together to design the product. Early tests show that sign recognition accuracy and indicators of user engagement and motivation show favorable performance and are at appropriate levels. This proposal aims to enhance inclusive digital ecosystems and foster linguistic equity in Mexican education through scalable, mobile, and culturally relevant technologies, in addition to its technical contributions. Full article
(This article belongs to the Special Issue Machine Learning Techniques for Computer Vision—2nd Edition)
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