Title :
MeshEye: A Hybrid-Resolution Smart Camera Mote for Applications in Distributed Intelligent Surveillance
Author :
Hengstler, Stephan ; Prashanth, Daniel ; Fong, Sufen ; Aghajan, Hamid
Author_Institution :
Stanford Univ., Stanford
Abstract :
Surveillance is one of the promising applications to which smart camera motes forming a vision-enabled network can add increasing levels of intelligence. We see a high degree of in-node processing in combination with distributed reasoning algorithms as the key enablers for such intelligent surveillance systems. To put these systems into practice still requires a considerable amount of research ranging from mote architectures, pixel-processing algorithms, up to distributed reasoning engines. This paper introduces MeshEye, an energy-efficient smart camera mote architecture that has been designed with intelligent surveillance as the target application in mind. Special attention is given to MeshEye´s unique vision system: a low-resolution stereo vision system continuously determines position, range, and size of moving objects entering its field of view. This information triggers a color camera module to acquire a high-resolution image sub-array containing the object, which can be efficiently processed in subsequent stages. It offers reduced complexity, response time, and power consumption over conventional solutions. Basic vision algorithms for object detection, acquisition, and tracking are described and illustrated on real- world data. The paper also presents a basic power model that estimates lifetime of our smart camera mote in battery-powered operation for intelligent surveillance event processing.
Keywords :
image colour analysis; image resolution; image sensors; intelligent sensors; object detection; stereo image processing; surveillance; MeshEye; acquisition; battery-powered operation; color camera module; distributed intelligent surveillance; high-resolution image sub-array; hybrid-resolution smart camera; low-resolution stereo vision system; object detection; pixel-processing algorithm; tracking; vision-enabled network; Color; Delay; Energy efficiency; Engines; Intelligent networks; Intelligent systems; Machine vision; Smart cameras; Stereo vision; Surveillance; Algorithms; Design; Distributed Intelligence; Experimentation; Measurement; Mote Architecture; Performance; Power Efficiency; Smart Cameras; Wireless Sensor Networks;
Conference_Titel :
Information Processing in Sensor Networks, 2007. IPSN 2007. 6th International Symposium on
Conference_Location :
Cambridge, MA
Print_ISBN :
978-1-59593-638-7
DOI :
10.1109/IPSN.2007.4379696