no code implementations • 10 Jan 2025 • Asfia Kawnine, Francis Palma, Seyed Alireza Rahimi Azghadi, Hung Cao
We obtained accuracy of 75. 62% and 89. 52% for the global model without having to train the model using the data constituted with the designated tier.
no code implementations • 23 Sep 2024 • Truong Thanh Hung Nguyen, Phuc Truong Loc Nguyen, Monica Wachowicz, Hung Cao
This paper presents a Multimodal Ambient Context-enriched Intelligence Platform (MACeIP) for Smart Cities, a comprehensive system designed to enhance urban management and citizen engagement.
no code implementations • 3 Sep 2024 • Reza Sayfoori, Mao-Hsiang Huang, Amir Naderi, Mehwish Bhatti, Ron D. Frostig, Hung Cao
This research provides a more accurate and reliable approach for animal localization, showcasing the potential of UWB sensor technology in enhancing precision in behavioral studies.
1 code implementation • 16 Jul 2024 • Truong Thanh Hung Nguyen, Phuc Truong Loc Nguyen, Hung Cao
Our framework incorporates XAI and the Large Vision Language Model to deliver human-centered interpretability through visual and textual explanations to end-users.
1 code implementation • 20 Apr 2024 • Quoc Khanh Nguyen, Truong Thanh Hung Nguyen, Vo Thanh Khang Nguyen, Van Binh Truong, Tuong Phan, Hung Cao
To address the challenges of providing quick and plausible explanations in Explainable AI (XAI) for object detection models, we introduce the Gaussian Class Activation Mapping Explainer (G-CAME).
no code implementations • 14 Mar 2024 • Atah Nuh Mih, Alireza Rahimi, Asfia Kawnine, Francis Palma, Monica Wachowicz, Rickey Dubay, Hung Cao
The results of the Caltech-101 image classification show that our model has a better test accuracy (76. 21%) than Xception (75. 89%), uses less memory on average (847. 9MB) than Xception (874. 6MB), and has faster training and inference times.
1 code implementation • 19 Feb 2024 • Truong Thanh Hung Nguyen, Tobias Clement, Phuc Truong Loc Nguyen, Nils Kemmerzell, Van Binh Truong, Vo Thanh Khang Nguyen, Mohamed Abdelaal, Hung Cao
LangXAI is a framework that integrates Explainable Artificial Intelligence (XAI) with advanced vision models to generate textual explanations for visual recognition tasks.
Explainable artificial intelligence Explainable Artificial Intelligence (XAI) +3
no code implementations • 15 Feb 2024 • Amir Mohammad Naderi, Jennifer G. Casey, Mao-Hsiang Huang, Rachelle Victorio, David Y. Chiang, Calum MacRae, Hung Cao, Vandana A. Gupta
Finally, we applied this approach to assess the cardiovascular function in nrap mutant zebrafish, a model of cardiomyopathy.
no code implementations • 18 Jan 2024 • Truong Thanh Hung Nguyen, Vo Thanh Khang Nguyen, Quoc Hung Cao, Van Binh Truong, Quoc Khanh Nguyen, Hung Cao
The rising use of Artificial Intelligence (AI) in human detection on Edge camera systems has led to accurate but complex models, challenging to interpret and debug.
no code implementations • 18 Jan 2024 • Tobias Clement, Truong Thanh Hung Nguyen, Mohamed Abdelaal, Hung Cao
Visual quality inspection systems, crucial in sectors like manufacturing and logistics, employ computer vision and machine learning for precise, rapid defect detection.
no code implementations • 4 Dec 2023 • Atah Nuh Mih, Hung Cao, Asfia Kawnine, Monica Wachowicz
The results of our experiment show that our model has a remarkable performance with a test accuracy of 73. 45% without pre-training.
no code implementations • 26 Nov 2023 • Asfia Kawnine, Hung Cao, Atah Nuh Mih, Monica Wachowicz
We posit that implementing multiple global servers in federated learning can enhance efficiency by capitalizing on local collaborations and aggregating knowledge, and the error tolerance in regard to communication failure in the single server framework would be handled.
no code implementations • 5 Oct 2023 • Atah Nuh Mih, Hung Cao, Asfia Kawnine, Monica Wachowicz
The local (edge) models are then updated with the weights of the global (server) model.
no code implementations • 3 Oct 2023 • Manoj Vishwanath, Steven Cao, Nikil Dutt, Amir M. Rahmani, Miranda M. Lim, Hung Cao
We tested the robustness of this transfer learning technique on various rule-based classical machine learning models as well as the EEGNet-based deep learning model by evaluating on different datasets, including human and mouse data in a binary classification task of detecting individuals with versus without traumatic brain injury (TBI).
no code implementations • 26 Feb 2023 • Atah Nuh Mih, Hung Cao, Joshua Pickard, Monica Wachowicz, Rickey Dubay
Our proposed approach can be applied in defect detection applications where insufficient data is available for training a model and can be extended to identify imperfections in new unseen data.
no code implementations • 24 Jul 2022 • Sadaf Sarafan, Hoang Vuong, Daniel Jilani, Samir Malhotra, Michael P. H. Lau, Manoj Vishwanath, Tadesse Ghirmai, Hung Cao
In this paper, a novel method using Ensemble Kalman Filter (EnKF) is developed for denoising ECG signals.
no code implementations • 24 Feb 2021 • Amir Mohammad Naderi, Haisong Bu, Jingcheng Su, Mao-Hsiang Huang, Khuong Vo, Ramses Seferino Trigo Torres, J. -C. Chiao, Juhyun Lee, Michael P. H. Lau, Xiaolei Xu, Hung Cao
Zebrafish is a powerful and widely-used model system for a host of biological investigations including cardiovascular studies and genetic screening.
no code implementations • 23 Jan 2021 • Navjodh Singh Dhillon, Agustinus Sutandi, Manoj Vishwanath, Miranda M. Lim, Hung Cao, Dong Si
The increasing affordability and reduction in size of relatively high-performance computing systems combined with promising results from TBI related machine learning research make it possible to create compact and portable systems for early detection of TBI.