SCOVIS will investigate weakly supervised learning algorithms and self-adaptation strategies for analysis of visually observable procedures. SCOVIS research directly affects ease of deployment and minimises effort of operation of...
SCOVIS will investigate weakly supervised learning algorithms and self-adaptation strategies for analysis of visually observable procedures. SCOVIS research directly affects ease of deployment and minimises effort of operation of monitoring systems and is unique in the sense that it links object learning using low-level object descriptors and procedure learning with adaptation mechanisms and active camera network coordination. SCOVIS advocates a synergistic approach that combines largely unsupervised learning and model evolution in a bootstrapping process; it involves continuous learning from visual content in order to enrich the models and, inversely, the direct use of these models to enhance the extraction. In the SCOVIS application scenario user interaction will be significantly reduced compared to current methods. The system will be able to calculate the camera spatial relations automatically (self-configuration) for coupled, uncoupled and active cameras. The user will define a set of objects and procedures of interest during a very short supervised learning phase, while the associations with low-level descriptors will be automatically learnt. The resulting models will be significantly enhanced through online data acquisition and unsupervised learning (adaptation). The enhanced models will be able to be verified and potentially adapted through relevance feedback. The main measurable objective of SCOVIS will be to significantly improve the versatility and the performance of current monitoring systems. The resulting technology will enable the easy installation of intelligent supervision systems, which has not been possible so far, due to the prohibitively high manual effort and the inability to model complex visual processes. The produced technology will be evaluated through realistic scenarios related to industry and public infrastructure. The proposed research will be performed with absolute respect to privacy and personal data of monitored individuals.ver más
Seleccionando "Aceptar todas las cookies" acepta el uso de cookies para ayudarnos a brindarle una mejor experiencia de usuario y para analizar el uso del sitio web. Al hacer clic en "Ajustar tus preferencias" puede elegir qué cookies permitir. Solo las cookies esenciales son necesarias para el correcto funcionamiento de nuestro sitio web y no se pueden rechazar.
Cookie settings
Nuestro sitio web almacena cuatro tipos de cookies. En cualquier momento puede elegir qué cookies acepta y cuáles rechaza. Puede obtener más información sobre qué son las cookies y qué tipos de cookies almacenamos en nuestra Política de cookies.
Son necesarias por razones técnicas. Sin ellas, este sitio web podría no funcionar correctamente.
Son necesarias para una funcionalidad específica en el sitio web. Sin ellos, algunas características pueden estar deshabilitadas.
Nos permite analizar el uso del sitio web y mejorar la experiencia del visitante.
Nos permite personalizar su experiencia y enviarle contenido y ofertas relevantes, en este sitio web y en otros sitios web.