Pre Trained
Pre-trained models represent a cornerstone of modern machine learning, aiming to leverage the knowledge learned from massive datasets to improve efficiency and performance on downstream tasks. Current research focuses on adapting these pre-trained models to diverse modalities (e.g., vision, language, audio) and tasks, often employing transformer-based architectures and techniques like transfer learning, parameter-efficient fine-tuning, and contrastive learning. This approach significantly reduces the need for large, task-specific datasets and computational resources, accelerating progress in various fields including medical image analysis, speech recognition, and natural language processing. The resulting improvements in accuracy, efficiency, and generalizability have broad implications for both scientific discovery and practical applications.
Papers
StyleMC: Multi-Channel Based Fast Text-Guided Image Generation and Manipulation
Umut Kocasari, Alara Dirik, Mert Tiftikci, Pinar Yanardag
Textless Speech-to-Speech Translation on Real Data
Ann Lee, Hongyu Gong, Paul-Ambroise Duquenne, Holger Schwenk, Peng-Jen Chen, Changhan Wang, Sravya Popuri, Yossi Adi, Juan Pino, Jiatao Gu, Wei-Ning Hsu
KartalOl: Transfer learning using deep neural network for iris segmentation and localization: New dataset for iris segmentation
Jalil Nourmohammadi Khiarak, Samaneh Salehi Nasab, Farhang Jaryani, Seyed Naeim Moafinejad, Rana Pourmohamad, Yasin Amini, Morteza Noshad
Mimicking the Oracle: An Initial Phase Decorrelation Approach for Class Incremental Learning
Yujun Shi, Kuangqi Zhou, Jian Liang, Zihang Jiang, Jiashi Feng, Philip Torr, Song Bai, Vincent Y. F. Tan