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
Short-Period Variables in TESS Full-Frame Image Light Curves Identified via Convolutional Neural Networks
Greg Olmschenk, Richard K. Barry, Stela Ishitani Silva, Brian P. Powell, Ethan Kruse, Jeremy D. Schnittman, Agnieszka M. Cieplak, Thomas Barclay, Siddhant Solanki, Bianca Ortega, John Baker, Yesenia Helem Salinas Mamani
Rock Classification Based on Residual Networks
Sining Zhoubian, Yuyang Wang, Zhihuan Jiang
Data Augmentation and Transfer Learning Approaches Applied to Facial Expressions Recognition
Enrico Randellini, Leonardo Rigutini, Claudio Sacca'
ViGEO: an Assessment of Vision GNNs in Earth Observation
Luca Colomba, Paolo Garza
VisIRNet: Deep Image Alignment for UAV-taken Visible and Infrared Image Pairs
Sedat Ozer, Alain P. Ndigande
Reducing Texture Bias of Deep Neural Networks via Edge Enhancing Diffusion
Edgar Heinert, Matthias Rottmann, Kira Maag, Karsten Kahl
Learning Low-Rank Feature for Thorax Disease Classification
Rajeev Goel, Utkarsh Nath, Yancheng Wang, Alvin C. Silva, Teresa Wu, Yingzhen Yang
Is my Data in your AI Model? Membership Inference Test with Application to Face Images
Daniel DeAlcala, Aythami Morales, Julian Fierrez, Gonzalo Mancera, Ruben Tolosana, Javier Ortega-Garcia
Moving Object Proposals with Deep Learned Optical Flow for Video Object Segmentation
Ge Shi, Zhili Yang
Unmasking honey adulteration : a breakthrough in quality assurance through cutting-edge convolutional neural network analysis of thermal images
Ilias Boulbarj, Bouklouze Abdelaziz, Yousra El Alami, Douzi Samira, Douzi Hassan
Automated Classification of Body MRI Sequence Type Using Convolutional Neural Networks
Kimberly Helm, Tejas Sudharshan Mathai, Boah Kim, Pritam Mukherjee, Jianfei Liu, Ronald M. Summers
Multi-Attribute Vision Transformers are Efficient and Robust Learners
Hanan Gani, Nada Saadi, Noor Hussein, Karthik Nandakumar