Semantic Map
Semantic maps represent environments by integrating spatial information with semantic labels, aiming to provide robots and autonomous systems with a richer understanding of their surroundings than traditional occupancy grids. Current research focuses on developing robust methods for creating and updating these maps using various sensor data (LiDAR, RGB-D cameras) and incorporating large language models (LLMs) for higher-level reasoning and instruction following. This work is significant because accurate and comprehensive semantic maps are crucial for enabling advanced capabilities in robotics, autonomous navigation, and remote sensing applications, such as improved object navigation, scene understanding, and instruction-following.
Papers
SemanticSLAM: Learning based Semantic Map Construction and Robust Camera Localization
Mingyang Li, Yue Ma, Qinru Qiu
CIMGEN: Controlled Image Manipulation by Finetuning Pretrained Generative Models on Limited Data
Chandrakanth Gudavalli, Erik Rosten, Lakshmanan Nataraj, Shivkumar Chandrasekaran, B. S. Manjunath