| |||||||||||||||
EDLCV 2020 : Joint Workshop on Efficient Deep Learning in Computer Vision | |||||||||||||||
Link: https://workshop-edlcv.github.io | |||||||||||||||
| |||||||||||||||
Call For Papers | |||||||||||||||
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.
This workshop, co-located with CVPR 2020, addresses the following topics: Efficient Neural Network and Architecture Search - Compact and efficient neural network architecture for mobile and AR/VR devices - Hardware (latency, energy) aware neural network architectures search, targeted for mobile and AR/VR devices - Efficient architecture search algorithm for different vision tasks (detection, segmentation etc.) - Optimization for Latency, Accuracy and Memory usage, as motivated by embedded devices Neural Network Compression - Model compression (sparsification, binarization, quantization, pruning, thresholding and coding etc.) for efficient inference with deep networks and other ML models - Scalable compression techniques that can cope with large amounts of data and/or large neural networks (e.g., not requiring access to complete datasets for hyperparameter tuning and/or retraining) - Hashing (Binary) Codes Learning Low-bit Quantization Network and Hardware Accelerators - 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 - Low-precision training/inference & acceleration of deep neural networks on mobile devices Dataset and benchmark - Open datasets and test environments for benchmarking inference with efficient DNN representations - Metrics for evaluating the performance of efficient DNN representations - Methods for comparing efficient DNN inference across platforms and tasks Label/sample/feature efficient learning - Label Efficient Feature Representation Learning Methods, e.g. Unsupervised Learning, Domain Adaptation, Weakly Supervised Learning and SelfSupervised Learning Approaches - Sample Efficient Feature Learning Methods, e.g. Meta Learning - Low Shot learning Techniques - New Applications, e.g. Medical Domain 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) and augmented reality - Learning efficient deep neural networks under memory and computation constraints for on-device applications All submissions will be handled electronically via the workshop’s CMT Website. Click the following link to go to the submission site: https://cmt3.research.microsoft.com/EDLCV2020/ Papers should describe original and unpublished work about the related topics. Each paper will receive double blind reviews, moderated by the workshop chairs. Authors should take into account the following: - All papers must be written and presented in English. - All papers must be submitted in PDF format. The workshop paper format guidelines are the same as the Main Conference papers - The maximum paper length is 8 pages (excluding references). Note that shorter submissions are also welcome. - The accepted papers will be published in CVF open access as well as in IEEE Xplore. |
|