Toward analyzing mutual interference on infrared-enabled depth cameras

Beitrag in einer Fachzeitschrift

Details zur Publikation

Autor(en): Adams Seewald L, Facco Rodrigues V, Ollenschläger M, Stoffel Antunes R, Andre da Costa C, da Rosa Righi R, da Silveira Junior LG, Maier A, Eskofier B, Fahrig R
Zeitschrift: Computer Vision and Image Understanding
Verlag: Academic Press Inc.
Jahr der Veröffentlichung: 2018
ISSN: 1077-3142


Camera setups with multiple devices are a key aspect of ambient monitoring applications. These types of setups can result in data corruption when applied to recent RGB-D camera models because of mutual interference of the infrared light emitters employed by such devices. Consequently, the behavior of such interference must be appropriately evaluated to provide data that will allow monitoring systems to handle possible errors introduced into the data captured by depth sensors. However, multi-device setups have been explored in few studies in the current literature, especially in terms of the detailed measurements of the interference’s effect during long-term usage of RGB-D cameras. In this context, a methodology to evaluate the effect of mutual interference on the accuracy and precision of measured depth values is proposedin this article. The results of a series of experiments with different setups based on multiple depth cameras are explored. These setups include three devices that were widely used in studies in the computer vision literature related to depth imaging: the Microsoft Kinect v2 and two Intel RealSense models: R200 and D415. The experimental results indicate that the Kinect v2 yields considerably more stable depth readings than the RealSense R200 in single-camera scenarios, even considering the influence of the warm-up time that is characteristic of time-of-flight devices such as the Kinect v2. In multi-device setups, the Kinect v2 displays periodic peaks of mutual interference that increase in intensity depending on the distance between the cameras, with short-range setups yielding higher interference peaks. Further, the addition of more devices can potentially increase the duration of some interference peaks, albeit their intensity is not greatly affected. In long-range setups, the measured interference is small considering the experiments’ length, with the proportion of bad pixels among all captured frames ranging from 3.74% to 3.97% in a setup comprising three depth cameras. In turn, multi-device setups comprising the RealSense models are not affected by prejudicial interference peaks. In long-range setups, the instability of the R200 leads to its results being less accurate and precise than those of the Kinect v2 under mutual interference. However, in close range multi-device setups, the high interference peaks observed with the Kinect v2 render the RealSense models a more stable alternative.

FAU-Autoren / FAU-Herausgeber

Andre da Costa, Cristiano
Lehrstuhl für Informatik 5 (Mustererkennung)
da Silveira Junior, Luiz Gonzaga Dr.
Lehrstuhl für Informatik 5 (Mustererkennung)
Eskofier, Björn Prof. Dr.
Lehrstuhl für Informatik 14 (Maschinelles Lernen und Datenanalytik)
Maier, Andreas Prof. Dr.-Ing.
Lehrstuhl für Informatik 5 (Mustererkennung)
Ollenschläger, Malte
Lehrstuhl für Informatik 14 (Maschinelles Lernen und Datenanalytik)


Adams Seewald, L., Facco Rodrigues, V., Ollenschläger, M., Stoffel Antunes, R., Andre da Costa, C., da Rosa Righi, R.,... Fahrig, R. (2018). Toward analyzing mutual interference on infrared-enabled depth cameras. Computer Vision and Image Understanding.

Adams Seewald, Lucas, et al. "Toward analyzing mutual interference on infrared-enabled depth cameras." Computer Vision and Image Understanding (2018).


Zuletzt aktualisiert 2018-26-11 um 13:50