Convolutional Neural Network
Convolutional Neural Networks (CNNs) are a class of deep learning models designed for processing grid-like data, excelling in image analysis and related tasks. Current research focuses on improving CNN efficiency and robustness, exploring architectures like EfficientNet and Swin Transformers, as well as novel approaches such as Mamba models to address limitations in computational cost and long-range dependency capture. This active field of research has significant implications across diverse applications, including medical image analysis (e.g., cancer detection, Alzheimer's diagnosis), damage assessment, and art forgery detection, demonstrating the power of CNNs for automating complex visual tasks.
Papers
7T MRI Synthesization from 3T Acquisitions
Qiming Cui, Duygu Tosun, Reza Abbasi-Asl
HOLMES: HOLonym-MEronym based Semantic inspection for Convolutional Image Classifiers
Francesco Dibitonto, Fabio Garcea, André Panisson, Alan Perotti, Lia Morra
Optimized Detection and Classification on GTRSB: Advancing Traffic Sign Recognition with Convolutional Neural Networks
Dhruv Toshniwal, Saurabh Loya, Anuj Khot, Yash Marda
Multiscale Low-Frequency Memory Network for Improved Feature Extraction in Convolutional Neural Networks
Fuzhi Wu, Jiasong Wu, Youyong Kong, Chunfeng Yang, Guanyu Yang, Huazhong Shu, Guy Carrault, Lotfi Senhadji
CT evaluation of 2D and 3D holistic deep learning methods for the volumetric segmentation of airway lesions
Amel Imene Hadj Bouzid, Baudouin Denis de Senneville, Fabien Baldacci, Pascal Desbarats, Patrick Berger, Ilyes Benlala, Gaël Dournes
Genuine Knowledge from Practice: Diffusion Test-Time Adaptation for Video Adverse Weather Removal
Yijun Yang, Hongtao Wu, Angelica I. Aviles-Rivero, Yulun Zhang, Jing Qin, Lei Zhu
A Survey of Vision Transformers in Autonomous Driving: Current Trends and Future Directions
Quoc-Vinh Lai-Dang
Gabor-guided transformer for single image deraining
Sijin He, Guangfeng Lin
Attention is all you need for boosting graph convolutional neural network
Yinwei Wu
Cracking the neural code for word recognition in convolutional neural networks
Aakash Agrawal, Stanislas Dehaene
Knowledge Distillation of Convolutional Neural Networks through Feature Map Transformation using Decision Trees
Maddimsetti Srinivas, Debdoot Sheet