MOUSESIS: A FRAMES-AND-EVENTS DATASET FOR SPACE-TIME INSTANCE SEGMENTATION OF MICE
TECHNICAL UNIVERSITY OF BERLIN, SCIENCE OF INTELLIGENCE EXCELLENCE CLUSTER, ROBOTICS INSTITUTE GERMANY, FREE UNIVERSITY OF BERLIN, GERMAN FEDERAL INSTITUTE FOR RISK ASSESSMENT, EINSTEIN CENTER DIGITAL FUTURE
Friedhelm Hamann, Hanxiong Li, Paul Mieske, Lars Lewejohann, Guillermo Gallego
ABSTRACT
Enabled by large annotated datasets, tracking and segmentation of objects in videos has made remarkable progress in recent years. Despite these advancements, algorithms still struggle under degraded conditions and during fast movements. Event cameras are novel sensors with high temporal resolution and high dynamic range that offer promising advantages to address these challenges. However, annotated data for developing learning-based mask-level tracking algorithms with events is not available. To this end, we introduce: (