Feature Extraction
Feature extraction aims to identify and isolate relevant information from raw data, enabling efficient and accurate analysis. Current research emphasizes the use of deep learning models, including convolutional neural networks (CNNs), vision transformers (ViTs), and recurrent neural networks (RNNs), often combined with techniques like sparse modeling and multi-modal fusion to handle diverse data types (e.g., images, audio, text). These advancements improve performance in various applications, such as medical image analysis, object detection, and speech recognition, by providing more robust and informative representations of complex data. The resulting improvements in accuracy and efficiency have significant implications across numerous scientific disciplines and practical applications.
Papers
Gate Recurrent Unit Network based on Hilbert-Schmidt Independence Criterion for State-of-Health Estimation
Ziyue Huang, Lujuan Dang, Yuqing Xie, Wentao Ma, Badong Chen
Multimodal Feature Extraction and Fusion for Emotional Reaction Intensity Estimation and Expression Classification in Videos with Transformers
Jia Li, Yin Chen, Xuesong Zhang, Jiantao Nie, Ziqiang Li, Yangchen Yu, Yan Zhang, Richang Hong, Meng Wang
Comparing PSDNet, pretrained networks, and traditional feature extraction for predicting the particle size distribution of granular materials from photographs
Javad Manashti, François Duhaime, Matthew F. Toews, Pouyan Pirnia, Jn Kinsonn Telcy
An Inception-Residual-Based Architecture with Multi-Objective Loss for Detecting Respiratory Anomalies
Dat Ngo, Lam Pham, Huy Phan, Minh Tran, Delaram Jarchi, Sefki Kolozali