Deep Convolutional Neural Network
Deep convolutional neural networks (CNNs) are a class of artificial neural networks designed to process data with a grid-like topology, such as images and videos, excelling at tasks like image classification, object detection, and segmentation. Current research focuses on improving CNN architectures (e.g., exploring variations of ResNet, Inception, and efficientNet models), developing novel training techniques (like integer-only training and self-knowledge distillation), and addressing challenges such as imbalanced datasets and catastrophic forgetting in incremental learning. The widespread application of CNNs across diverse fields, from medical image analysis and autonomous driving to agricultural monitoring and remote sensing, highlights their significant impact on both scientific understanding and practical problem-solving.
Papers
When the Curious Abandon Honesty: Federated Learning Is Not Private
Franziska Boenisch, Adam Dziedzic, Roei Schuster, Ali Shahin Shamsabadi, Ilia Shumailov, Nicolas Papernot
A Generalized Zero-Shot Quantization of Deep Convolutional Neural Networks via Learned Weights Statistics
Prasen Kumar Sharma, Arun Abraham, Vikram Nelvoy Rajendiran
Automatic Semantic Segmentation of the Lumbar Spine: Clinical Applicability in a Multi-parametric and Multi-centre Study on Magnetic Resonance Images
Jhon Jairo Saenz-Gamboa, Julio Domenech, Antonio Alonso-Manjarrés, Jon A. Gómez, Maria de la Iglesia-Vayá
Keypoint Message Passing for Video-based Person Re-Identification
Di Chen, Andreas Doering, Shanshan Zhang, Jian Yang, Juergen Gall, Bernt Schiele
SStaGCN: Simplified stacking based graph convolutional networks
Jia Cai, Zhilong Xiong, Shaogao Lv
Fully Linear Graph Convolutional Networks for Semi-Supervised Learning and Clustering
Yaoming Cai, Zijia Zhang, Zhihua Cai, Xiaobo Liu, Yao Ding, Pedram Ghamisi
FastFlow: Unsupervised Anomaly Detection and Localization via 2D Normalizing Flows
Jiawei Yu, Ye Zheng, Xiang Wang, Wei Li, Yushuang Wu, Rui Zhao, Liwei Wu