To spike or not to spike: A digital hardware perspective on deep learning acceleration
As deep learning models scale, they become increasingly competitive from domains
spanning from computer vision to natural language processing; however, this happens at …
spanning from computer vision to natural language processing; however, this happens at …
End-to-end supervised multilabel contrastive learning
A Sajedi, S Khaki, KN Plataniotis… - arXiv preprint arXiv …, 2023 - arxiv.org
Multilabel representation learning is recognized as a challenging problem that can be
associated with either label dependencies between object categories or data-related issues …
associated with either label dependencies between object categories or data-related issues …
Dais: Automatic channel pruning via differentiable annealing indicator search
The convolutional neural network (CNN) has achieved great success in fulfilling computer
vision tasks despite large computation overhead against efficient deployment. Channel …
vision tasks despite large computation overhead against efficient deployment. Channel …
Exploiting explainable metrics for augmented sgd
MS Hosseini, M Tuli… - Proceedings of the IEEE …, 2022 - openaccess.thecvf.com
Explaining the generalization characteristics of deep learning is an emerging topic in
advanced machine learning. There are several unanswered questions about how learning …
advanced machine learning. There are several unanswered questions about how learning …
ReefCoreSeg: A clustering-based framework for multi-source data fusion for segmentation of reef cores
Coral reefs are among the most biologically diverse and economically valuable ecosystems
on Earth, but they are threatened by climate change. Understanding how reefs developed …
on Earth, but they are threatened by climate change. Understanding how reefs developed …
Green AI Quotient: Assessing Greenness of AI-based software and the way forward
As the world takes cognizance of AI's growing role in greenhouse gas (GHG) and carbon
emissions, the focus of AI research & development is shifting towards inclusion of energy …
emissions, the focus of AI research & development is shifting towards inclusion of energy …
Advancing green computer vision: principles and practices for sustainable development for real-time computer vision applications
MAM Kramer, PM Roth - … time Processing of Image, Depth, and …, 2024 - spiedigitallibrary.org
Recent algorithmic developments, specifically in deep learning, have propelled computer
vision forward for practical applications. However, the high computational complexity and …
vision forward for practical applications. However, the high computational complexity and …
P4AI: Approaching AI Ethics through Principlism
The field of computer vision is rapidly evolving, particularly in the context of new methods of
neural architecture design. These models contribute to (1) the Climate Crisis-increased CO2 …
neural architecture design. These models contribute to (1) the Climate Crisis-increased CO2 …
NoFADE: Analyzing Diminishing Returns on CO2 Investment
Climate change continues to be a pressing issue that currently affects society at-large. It is
important that we as a society, including the Computer Vision (CV) community take steps to …
important that we as a society, including the Computer Vision (CV) community take steps to …