Description: In the context of computer vision, fullness refers to the quality of being complete or filled in the representation of visual data. This concept implies that computer vision systems must be able to capture, process, and represent visual information comprehensively, ensuring that all relevant aspects of an image or video are considered. Fullness is crucial for the accurate interpretation of scenes, objects, and actions, as an incomplete representation can lead to errors in identification and analysis. In this sense, fullness not only refers to the quantity of visual data but also to the quality and relevance of the information extracted from it. This includes a system’s ability to recognize patterns, textures, colors, and shapes, as well as to understand the context in which they are presented. Fullness in computer vision is a desired goal that seeks to enhance the effectiveness of applications in various fields, such as object detection, facial recognition, and autonomous navigation, where a complete and accurate representation of visual data is fundamental to system performance.