Deep Learning Application
Deep learning applications are rapidly expanding across diverse fields, driven by the need for efficient, accurate, and privacy-preserving solutions. Current research focuses on improving model efficiency through techniques like lossy compression, quantization, and efficient inference frameworks for resource-constrained devices, as well as addressing challenges related to data privacy (e.g., machine unlearning) and model robustness (e.g., verification-friendly networks). These advancements are significantly impacting various sectors, from healthcare (medical image analysis) to environmental monitoring (seafloor image classification) and industrial automation, by enabling faster, more accurate, and resource-efficient solutions. Furthermore, the use of foundation models and federated learning is enabling broader data access and collaborative model training while preserving privacy.
Papers
Advancing Histopathology with Deep Learning Under Data Scarcity: A Decade in Review
Ahmad Obeid, Said Boumaraf, Anabia Sohail, Taimur Hassan, Sajid Javed, Jorge Dias, Mohammed Bennamoun, Naoufel Werghi
Deep Learning Applications in Medical Image Analysis: Advancements, Challenges, and Future Directions
Aimina Ali Eli, Abida Ali
Generating Synthetic Time Series Data for Cyber-Physical Systems
Alexander Sommers, Somayeh Bakhtiari Ramezani, Logan Cummins, Sudip Mittal, Shahram Rahimi, Maria Seale, Joseph Jaboure
ChatGPT and general-purpose AI count fruits in pictures surprisingly well
Konlavach Mengsuwan, Juan Camilo Rivera Palacio, Masahiro Ryo