Incremental Learning
Incremental learning aims to enable machine learning models to continuously acquire new knowledge from sequential data streams without forgetting previously learned information, a challenge known as catastrophic forgetting. Current research focuses on developing algorithms and model architectures, such as those employing knowledge distillation, generative replay, and various regularization techniques, to address this issue across diverse applications like image classification, gesture recognition, and medical image analysis. This field is significant because it moves machine learning closer to human-like continuous learning capabilities, with potential impacts on personalized medicine, robotics, and other areas requiring adaptation to evolving data.
Papers
MCF-VC: Mitigate Catastrophic Forgetting in Class-Incremental Learning for Multimodal Video Captioning
Huiyu Xiong, Lanxiao Wang, Heqian Qiu, Taijin Zhao, Benliu Qiu, Hongliang Li
SDDGR: Stable Diffusion-based Deep Generative Replay for Class Incremental Object Detection
Junsu Kim, Hoseong Cho, Jihyeon Kim, Yihalem Yimolal Tiruneh, Seungryul Baek
Decentralised and collaborative machine learning framework for IoT
Martín González-Soto, Rebeca P. Díaz-Redondo, Manuel Fernández-Veiga, Bruno Rodríguez-Castro, Ana Fernández-Vilas
Continual Learning: Forget-free Winning Subnetworks for Video Representations
Haeyong Kang, Jaehong Yoon, Sung Ju Hwang, Chang D. Yoo
DSS: A Diverse Sample Selection Method to Preserve Knowledge in Class-Incremental Learning
Sahil Nokhwal, Nirman Kumar
PBES: PCA Based Exemplar Sampling Algorithm for Continual Learning
Sahil Nokhwal, Nirman Kumar
Class-Wise Buffer Management for Incremental Object Detection: An Effective Buffer Training Strategy
Junsu Kim, Sumin Hong, Chanwoo Kim, Jihyeon Kim, Yihalem Yimolal Tiruneh, Jeongwan On, Jihyun Song, Sunhwa Choi, Seungryul Baek
CF-NeRF: Camera Parameter Free Neural Radiance Fields with Incremental Learning
Qingsong Yan, Qiang Wang, Kaiyong Zhao, Jie Chen, Bo Li, Xiaowen Chu, Fei Deng