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
Classification of Non-native Handwritten Characters Using Convolutional Neural Network
F. A. Mamun, S. A. H. Chowdhury, J. E. Giti, H. Sarker
A Probabilistic Approach to Learning the Degree of Equivariance in Steerable CNNs
Lars Veefkind, Gabriele Cesa
Enhancing Sign Language Detection through Mediapipe and Convolutional Neural Networks (CNN)
Aditya Raj Verma, Gagandeep Singh, Karnim Meghwal, Banawath Ramji, Praveen Kumar Dadheech
The Missing Curve Detectors of InceptionV1: Applying Sparse Autoencoders to InceptionV1 Early Vision
Liv Gorton
RNNs, CNNs and Transformers in Human Action Recognition: A Survey and a Hybrid Model
Khaled Alomar, Halil Ibrahim Aysel, Xiaohao Cai
Towards General Robustness Verification of MaxPool-based Convolutional Neural Networks via Tightening Linear Approximation
Yuan Xiao, Shiqing Ma, Juan Zhai, Chunrong Fang, Jinyuan Jia, Zhenyu Chen
LncRNA-disease association prediction method based on heterogeneous information completion and convolutional neural network
Wen-Yu Xi, Juan Wang, Yu-Lin Zhang, Jin-Xing Liu, Yin-Lian Gao
Research on the Application of Computer Vision Based on Deep Learning in Autonomous Driving Technology
Jingyu Zhang, Jin Cao, Jinghao Chang, Xinjin Li, Houze Liu, Zhenglin Li
From Seedling to Harvest: The GrowingSoy Dataset for Weed Detection in Soy Crops via Instance Segmentation
Raul Steinmetz, Victor A. Kich, Henrique Krever, Joao D. Rigo Mazzarolo, Ricardo B. Grando, Vinicius Marini, Celio Trois, Ard Nieuwenhuizen
Phasor-Driven Acceleration for FFT-based CNNs
Eduardo Reis, Thangarajah Akilan, Mohammed Khalid
Upright adjustment with graph convolutional networks
Raehyuk Jung, Sungmin Cho, Junseok Kwon