Title :
Adaptive Cast Shadow Elimination Algorithm for Surveillance Videos Using t Random Values
Author :
Girisha, R. ; Murali, S.
Author_Institution :
P.E. T. Res. Centre, P.E.S.C.E., Mandya, India
Abstract :
Cast shadows produce troublesome effects for video surveillance systems, typically for object tracking from a fixed viewpoint. It yields appearance variations of objects depending on whether they are inside or outside the shadows. To eliminate these cast shadows from video sequences, we propose an algorithm based on the knowledge that, cast shadow points are usually adjacent to object points and are merged in a single blob on the edge of the moving objects and also cast shadow occurs only at run time (as objects move in the scene).This paper presents a novel pixel based statistical approach to detect moving cast shadows and consequently eliminates them from segmented motion objects. The approach calculates t random values (t) using color information of segmented object edges to build t distribution model, t distribution models are constructed and updated for every input frame. This statistical modeling can deal with scenes with complex and time varying illuminations. Results obtained with different indoor and outdoor sequences show the robustness of the approach.
Keywords :
edge detection; image motion analysis; image segmentation; image sequences; object recognition; statistical analysis; video surveillance; adaptive cast shadow elimination algorithm; motion segmentation; random values; segmented object edges; single blob; statistical approach; time varying illuminations; video sequences; video surveillance systems; Computer vision; Humans; Layout; Light sources; Lighting; Motion detection; Motion segmentation; Object detection; Robustness; Video surveillance;
Conference_Titel :
India Conference (INDICON), 2009 Annual IEEE
Conference_Location :
Gujarat
Print_ISBN :
978-1-4244-4858-6
Electronic_ISBN :
978-1-4244-4859-3
DOI :
10.1109/INDCON.2009.5409379