Title :
Analytics-Modulated coding of surveillance video
Author :
Cheok, Lai-Tee ; Gagvani, Nikhil
Abstract :
Video surveillance systems increasingly use H.264 coding to achieve 24×7 recording and streaming. However, with the proliferation of security cameras, and the need to store several months of video, bandwidth and storage costs can be significant. We propose a new compression technique to significantly improve the coding efficiency of H.264 for surveillance video. Video content is analyzed and video semantics are extracted using video analytics algorithms such as segmentation, classification and tracking. In contrast to existing approaches, our Analytics-Modulated Compression (AMC) scheme does not require coding of object shape information and produces bit-streams that are standards-compliant and not limited to specific H.264 profiles. Extensive experiments were conducted involving real surveillance scenes. Results show that our technique achieves compression gains of 67% over JM. We also introduced AMC Rate Control (AMC RC) which allocates bits in response to scene dynamics. AMC RC is shown to significantly reduce artifacts in constant-bitrate video at low bitrates.
Keywords :
natural scenes; video coding; video recording; video streaming; video surveillance; 24x7 video recording; AMC rate control; H.264 coding; analytics-modulated coding; analytics-modulated compression; real surveillance scenes; security camera; video content; video semantics; video streaming; video surveillance; Bit rate; Encoding; Engines; Equations; Mathematical model; Streaming media; Surveillance; H.264; object-based coding; rate control; video analytics; video surveillance;
Conference_Titel :
Multimedia and Expo (ICME), 2010 IEEE International Conference on
Conference_Location :
Suntec City
Print_ISBN :
978-1-4244-7491-2
DOI :
10.1109/ICME.2010.5583327