- The document proposes a novel background subtraction algorithm for urban surveillance systems using big data techniques.
- The algorithm aims to automatically update the background image when no objects are detected, making it robust to changes in lighting conditions. It does this by filtering images to identify high frequency areas where objects are likely to be located.
- A key contribution is a new "grate filter" that is computationally more efficient than existing filters while still effectively identifying object areas. This helps address the high computational demands of processing large volumes of surveillance data.