Global Descriptor

Global descriptors are compact numerical representations of images or point clouds, aiming to capture the overall scene characteristics for tasks like place recognition and object retrieval. Current research focuses on improving descriptor robustness to variations in viewpoint, illumination, and occlusion, often employing deep learning architectures like NetVLAD and transformers, and exploring the fusion of global and local descriptors for enhanced accuracy and efficiency. These advancements have significant implications for applications such as autonomous navigation, robotics, and large-scale image search, enabling more reliable and efficient scene understanding.

Papers