Hybrid Fusion
Hybrid fusion in machine learning focuses on combining information from multiple sources (e.g., different sensor modalities, data types, or model outputs) to improve performance in various tasks, such as image segmentation, object detection, and natural language processing. Current research emphasizes the development and application of novel fusion architectures, including transformers, convolutional neural networks, and ensemble methods, often tailored to specific application domains and data characteristics. This approach holds significant promise for enhancing the accuracy, robustness, and efficiency of AI systems across diverse scientific and practical applications, particularly in areas with complex, multi-faceted data.
Papers
Effective internal language model training and fusion for factorized transducer model
Jinxi Guo, Niko Moritz, Yingyi Ma, Frank Seide, Chunyang Wu, Jay Mahadeokar, Ozlem Kalinli, Christian Fuegen, Mike Seltzer
Entity Disambiguation via Fusion Entity Decoding
Junxiong Wang, Ali Mousavi, Omar Attia, Ronak Pradeep, Saloni Potdar, Alexander M. Rush, Umar Farooq Minhas, Yunyao Li
CR3DT: Camera-RADAR Fusion for 3D Detection and Tracking
Nicolas Baumann, Michael Baumgartner, Edoardo Ghignone, Jonas Kühne, Tobias Fischer, Yung-Hsu Yang, Marc Pollefeys, Michele Magno
IS-Fusion: Instance-Scene Collaborative Fusion for Multimodal 3D Object Detection
Junbo Yin, Jianbing Shen, Runnan Chen, Wei Li, Ruigang Yang, Pascal Frossard, Wenguan Wang
Your Image is My Video: Reshaping the Receptive Field via Image-To-Video Differentiable AutoAugmentation and Fusion
Sofia Casarin, Cynthia I. Ugwu, Sergio Escalera, Oswald Lanz
PTSD-MDNN : Fusion tardive de r\'eseaux de neurones profonds multimodaux pour la d\'etection du trouble de stress post-traumatique
Long Nguyen-Phuoc, Renald Gaboriau, Dimitri Delacroix, Laurent Navarro
PoIFusion: Multi-Modal 3D Object Detection via Fusion at Points of Interest
Jiajun Deng, Sha Zhang, Feras Dayoub, Wanli Ouyang, Yanyong Zhang, Ian Reid