CNN Model
Convolutional Neural Networks (CNNs) are a fundamental deep learning architecture primarily used for image processing tasks, aiming to efficiently extract and classify features from visual data. Current research focuses on improving CNN efficiency and robustness, exploring variations like hybrid models integrating transformers, lightweight architectures for resource-constrained devices, and techniques to enhance interpretability and mitigate biases. The widespread applicability of CNNs spans diverse fields, from medical image analysis and object detection in autonomous systems to artistic creativity assessment and environmental monitoring, significantly impacting both scientific understanding and practical applications.
Papers
Vietnamese Hate and Offensive Detection using PhoBERT-CNN and Social Media Streaming Data
Khanh Q. Tran, An T. Nguyen, Phu Gia Hoang, Canh Duc Luu, Trong-Hop Do, Kiet Van Nguyen
A comparative study between vision transformers and CNNs in digital pathology
Luca Deininger, Bernhard Stimpel, Anil Yuce, Samaneh Abbasi-Sureshjani, Simon Schönenberger, Paolo Ocampo, Konstanty Korski, Fabien Gaire
Sparsely-gated Mixture-of-Expert Layers for CNN Interpretability
Svetlana Pavlitska, Christian Hubschneider, Lukas Struppek, J. Marius Zöllner
Privacy-preserving Social Distance Monitoring on Microcontrollers with Low-Resolution Infrared Sensors and CNNs
Chen Xie, Francesco Daghero, Yukai Chen, Marco Castellano, Luca Gandolfi, Andrea Calimera, Enrico Macii, Massimo Poncino, Daniele Jahier Pagliari
Attentions Help CNNs See Better: Attention-based Hybrid Image Quality Assessment Network
Shanshan Lao, Yuan Gong, Shuwei Shi, Sidi Yang, Tianhe Wu, Jiahao Wang, Weihao Xia, Yujiu Yang