Efficient Deep Learning for Computer Vision
CVPR Workshop 2023
CVPR 2023
Vancouver, CANADA
June, 2023
You can find a list of accepted papers later.
TBWorkshop Overview
Computer Vision has a long history of academic research, and recent advances in deep learning have provided significant improvements in the ability to understand visual content. As a result of these research advances on problems such as object classification, object detection, and image segmentation, there has been a rapid increase in the adoption of Computer Vision in industry; however, mainstream Computer vision research has given little consideration to speed or computation time, and even less to constraints such as power/energy, memory footprint and model size, or carbon emission. Nevertheless, addressing all of these metrics is essential if advances in Computer Vision are going to be widely available on mobile and AR/VR devices. In this year’s ECV workshop, our topics include but are not limited to the following:
Particular topics that will be covered:
Efficient Neural Architecture, Compression, Quantization and Hardware Acceleration
Compact and efficient neural network architecture (CNN, Transformer, or mixed) for mobile and AR/VR devices
Efficient architecture search algorithm for different vision tasks (detection, segmentation, generative models, etc.)
Model compression (sparsification, binarization, quantization, pruning, thresholding and coding etc.) for efficient inference with deep networks and other ML models
Investigations into the processor architectures (CPU vs GPU vs DSP) that best support mobile applications.
Hardware accelerators to support Computer Vision on mobile and AR/VR platforms.
Data-Efficient Learning
Methods, algorithms, systems that improves data efficiency of deep learning
Semi-, weakly-, self-supervised learning for computer vision tasks
Zero-shot, few-shots learning, language-supervised learning
Open-set recognition, detection, and segmentation
Efficient Generative Models
Compact and efficient architectures for generative models, such as Generative Adversarial Networks (GANs), Autoregressive models, Denoising Diffusion Probabilistic Models (DDPMs)
Model-pruning and optimization algorithm for running generative models on mobile and AR/VR devices
Efficient Generative architecture search algorithm for generative model tasks (domain adaptation, style transfer, deep fake faces)
Latency-aware loss design for efficient generative models training
Efficient 3D models
Efficient 3D understanding models, including point-cloud, voxel, multi-view image based models.
Efficient neural rendering: efficient methods, models, and systems for reconstructing and rendering 3D scenes and objects. Efficient NeRF for on-device reconstruction training and rendering.
Low Power Computer Vision Challenge
On-device Disaster Scene Parsing Competition: Perform semantic segmentation on Nvidia Jestson Nano with disaster images captured by unmanned aerial vehicles (UAV).
Mobile and AR/VR Applications
Novel mobile and AR/VR applications using Computer Vision such as image processing (e.g. style transfer, body tracking, face tracking, depth estimation) and augmented reality
Multi-task learning and efficient multi-task models
On-device training, federated learning on devices
Program Summary
This workshop will feature invited talks, selected paper publication, and panel discussion. See the program section for details.
Call for papers
Important dates
Workshop paper submission deadline: TBD
Notification to authors: TBD
Camera ready deadline: TBD -- this is a firm deadline per CVPR workshop program.
Submission instructions
We are following the CVPR paper format: https://cvpr.thecvf.com/Conferences/2024/AuthorGuidelines
LaTeX/Word Templates: CVPR 2024 Author Kit.
We accept two forms of papers:
Long paper: Long papers should not exceed 8 pages. All the requirements are the same as the CVPR paper style guide. Long papers are for presenting mature works. A long paper should not only describe novel ideas but also have full experiments and analyses to support the proposed ideas.
Short paper: short papers should not exceed 4 pages. All other requirements are the same as the CVPR paper style guide. Short papers are for sharing early stage ideas. A short paper should describe novel ideas and have basic experiments to support the ideas. Comprehensive experiments and analyses, however, are not necessary.
Note the page limit includes figures and tables, in the CVPR style. Additional pages containing only cited references are allowed. Papers with more than 4 pages (excluding references) will be reviewed as long papers, and papers with more than 8 pages (excluding references) will be rejected without review.
A paper should be submitted using the above templates. The length should match that intended for final publication.
Blind review: we adopt double-blind review for this workshop. Submitted papers and supplementary materials should not reveal any information about the author.
Dual submission: We do not accept paper submissions that have been published (including at the CVPR main conference) or are under review for other conferences or workshops. Accepted papers are expected to be published at CVPR proceedings.
Submission website
TBD