Title :
Asynchronous Stereo Vision for Event-Driven Dynamic Stereo Sensor Using an Adaptive Cooperative Approach
Author :
Piatkowska, Ewa ; Belbachir, Ahmed Nabil ; Gelautz, Margrit
Author_Institution :
Safety & Security Dept., AIT Austrian Inst. of Technol., Vienna, Austria
Abstract :
This paper presents an adaptive cooperative approach towards the 3D reconstruction tailored for a bio-inspired depth camera: the stereo dynamic vision sensor (DVS). DVS consists of self-spiking pixels that asynchronously generate events upon relative light intensity changes. These sensors have the advantage to allow simultaneously high temporal resolution (better than 10μs) and wide dynamic range (>120dB) at sparse data representation, which is not possible with frame-based cameras. In order to exploit the potential of DVS and benefit from its features, depth calculation should take into account the spatiotemporal and asynchronous aspect of data provided by the sensor. This work deals with developing an appropriate approach for the asynchronous, event-driven stereo algorithm. We propose a modification of the cooperative network in which the history of the recent activity in the scene is stored to serve as spatiotemporal context used in disparity calculation for each incoming event. The network constantly evolves in time - as events are generated. In our work, not only the spatiotemporal aspect of the data is preserved but also the matching is performed asynchronously. The results of the experiments prove that the proposed approach is well suited for DVS data and can be successfully used for our efficient passive depth camera.
Keywords :
cameras; computer vision; image reconstruction; image representation; image sensors; stereo image processing; 3D reconstruction; DVS; adaptive cooperative approach; asynchronous data; asynchronous stereo vision; bioinspired depth camera; cooperative network; depth calculation; disparity calculation; event-driven dynamic stereo sensor; event-driven stereo algorithm; frame-based camera; recent activity; self-spiking pixels; sparse data representation; spatiotemporal aspect; spatiotemporal context; spatiotemporal data; stereo dynamic vision sensor; temporal resolution; Cameras; Cooperative systems; Heuristic algorithms; Robot sensing systems; Spatiotemporal phenomena; Stereo vision; Voltage control; Asynchronous stereo vision; asynchronous depth camera; cooperative network; dynamic vision sensor;
Conference_Titel :
Computer Vision Workshops (ICCVW), 2013 IEEE International Conference on
Conference_Location :
Sydney, NSW
DOI :
10.1109/ICCVW.2013.13