Object detection is an essential first stage in a surveillance system, primarily because it focuses all the subsequent processes. The
standard approach to object detection is background subtraction. At the core of background subtraction is a module that maintains an image that is representative of the scene monitored by a camera. This work compares two background subbtraction/maintenance algorithms: adaptive Gaussian mixture model and the Wallflower
method. The algorithms are evaluated using video footage of the real world. The Receiver Operating Characteristic (ROC) curves are used to quantify the performance of the algorithms. In our experiments, the adaptive Gaussian mixture model outperforms the Wallflower method.
Reference:
Keaikitse, M., Brink, W. and Govender, N. Detection of moving objects: The first stage of an autonomous surveillance system. 4th CSIR Biennial Conference: Real problems relevant solutions, CSIR, Pretoria, 9-10 October 2012
Keaikitse, M., Brink, W., & Govender, N. (2012). Detection of moving objects: The first stage of an autonomous surveillance system. http://hdl.handle.net/10204/6249
Keaikitse, M, W Brink, and Natasha Govender. "Detection of moving objects: The first stage of an autonomous surveillance system." (2012): http://hdl.handle.net/10204/6249
Keaikitse M, Brink W, Govender N, Detection of moving objects: The first stage of an autonomous surveillance system; 2012. http://hdl.handle.net/10204/6249 .