In computer vision, gradient-based tracking is usually performed from monochromatic inputs. However, a few research studies consider the influence of the chosen color-tograyscale conversion technique. This paper evaluates the impact of these conversion algorithms on tracking and homography calculation results, both being fundamental steps of augmented reality applications. Eighteen color-to-greyscale algorithms were investigated. These observations allowed the authors to conclude that the methods can cause significant discrepancies in the overall performance. As a related finding, experiments also showed that pure color channels (R, G, B) yielded more stability and precision when compared to other approaches.
CITATION STYLE
Macêdo, S., Melo, G., & Kelner, J. (2015). A comparative study of grayscale conversion techniques applied to SIFT descriptors. Journal on Interactive Systems, 6(2). https://doi.org/10.5753/jis.2015.662
Mendeley helps you to discover research relevant for your work.