Matching Accuracy
Matching accuracy, the degree to which algorithms correctly identify corresponding elements across different data modalities or datasets, is a central problem across numerous scientific fields. Current research focuses on improving robustness and efficiency through various approaches, including multimodal algorithms that integrate diverse data types (e.g., image, text, audio), adversarial networks for distribution matching, and novel keypoint detection and descriptor methods for image and point cloud registration. These advancements have significant implications for diverse applications, ranging from autonomous driving and medical image analysis to efficient data management and improved user experiences in online platforms.
Papers
Joint Extraction and Classification of Danish Competences for Job Matching
Qiuchi Li, Christina Lioma
EI-Nexus: Towards Unmediated and Flexible Inter-Modality Local Feature Extraction and Matching for Event-Image Data
Zhonghua Yi, Hao Shi, Qi Jiang, Kailun Yang, Ze Wang, Diyang Gu, Yufan Zhang, Kaiwei Wang