Call for papers
2025 The 8th International Conference on Machine Vision and
Applications (ICMVA 2025) will be held in Melbourne,
Australia during June 12-14, 2025.
This conference is dedicated to the presentation and
discussion of the latest application and findings in the
field of Machine Vision. Machine Vision technologies in
their essence leverage advanced digital inventions that
enhance efficiency, accuracy, and decision-making across
various sectors such as industrial automation, quality
control, inspection, medical diagnostics, security, and
robotics. While the focus of the ICMVA is directed to the
presentation of current applications of Machine Vision, the
conference is also aimed at those experts who deal with new
principles and methods in that emerging technology. Scope:
Machine Vision: Practice and Applications, Methods,
Principles, and Algorithms.
The conference will bring together leading researchers,
engineers and scientists in the domain of interest from
around the world. Topics of interest for submission include,
but are not limited to:
Practice and Applications of
Machine Vision
Industrial Automation; Digital Production; Digital
Metrology; Quality Control and Inspection; Non-Destructive
Testing and Fault Detection; Medical Imaging; Robotics;
Autonomous Vehicles; Inspection of Micro and Nano
Structures; Automation in Agriculture and Food Production;
Surveillance and Security; Motion Analysis; Environmental
Monitoring; Protection of Cultural Heritage; Remote Sensing
Principles, Methods and Algorithms
of Machine Vision
Image Formation (Image Acquisition, Optical Basics,
Photometric Basics, Vision Models, Color Spaces, Sensors)
Image Modeling (Image Representation, Systems and
Signals, 2D-, 3D-Models, Projections, Rendering, Modalities,
Parameters)
Image Processing (Image Preprocessing, Image
Enhancement, Image Filtering, Image Analysis, Image
Restoration, Multiresolution Analysis, Image Alignment and
Stitching, Geometric Transformations)
Image Classification (Feature Space, Feature
Extraction, etches and Contours, Segmentation, Texture
Analysis, Morphology, Pattern Recognition, Computer Vision,
Machine Vision)
Image Reconstruction (Depth Estimation and
Reconstruction, Monocular Depth Estimation, Stereo Vision,
Multi-View Stereo, Shape from Shading, 3D Reconstruction,
Volumetric Representations)
Machine Learning, Deep Learning and Neural Networks
(Supervised Learning, Unsupervised Learning, Deep Neural
Networks, Convolutional Neural Networks)