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
ViTaL: An Advanced Framework for Automated Plant Disease Identification in Leaf Images Using Vision Transformers and Linear Projection For Feature Reduction
Abhishek Sebastian, Annis Fathima A, Pragna R, Madhan Kumar S, Yaswanth Kannan G, Vinay Murali
Experimental Study: Enhancing Voice Spoofing Detection Models with wav2vec 2.0
Taein Kang, Soyul Han, Sunmook Choi, Jaejin Seo, Sanghyeok Chung, Seungeun Lee, Seungsang Oh, Il-Youp Kwak