Title :
Stochastic Lane Shape Estimation Using Local Image Descriptors
Author :
Guoliang Liu ; Worgotter, Florentin ; Markelic, I.
Author_Institution :
Bernstein Center for Comput. Neurosci., Univ. of Gottingen, Gottingen, Germany
Abstract :
In this paper, we present a novel measurement model for particle-filter-based lane shape estimation. Recently, the particle filter has been widely used to solve lane detection and tracking problems, due to its simplicity, robustness, and efficiency. The key part of the particle filter is the measurement model, which describes how well a generated hypothesis (a particle) fits current visual cues in the image. Previous methods often simply combine multiple visual cues in a likelihood function without considering the uncertainties of local visual cues and the accurate probability relationship between visual cues and the lane model. In contrast, this paper derives a new measurement model by utilizing multiple kernel density to precisely estimate this probability relationship. The uncertainties of local visual cues are considered and modeled by Gaussian kernels. Specifically, we use a linear-parabolic model to describe the shape of lane boundaries on a top-view image and a partitioned particle filter (PPF), integrating it with our novel measurement model to estimate lane shapes in consecutive frames. Finally, the robustness of the proposed algorithm with the new measurement model is demonstrated on the DRIVSCO data sets.
Keywords :
Gaussian processes; estimation theory; object tracking; particle filtering (numerical methods); shape recognition; Gaussian kernels; PPF; lane detection; lane shape estimation; linear parabolic model; local image descriptors; measurement model; multiple kernel density; particle filter; partitioned particle filter; stochastic lane shape estimation; tracking problems; visual cues; Estimation; Image edge detection; Kernel; Mathematical model; Probability distribution; Shape; Visualization; Lane tracking; linear-parabolic model; local visual cues; multiple kernel density; partitioned particle filter (PPF);
Journal_Title :
Intelligent Transportation Systems, IEEE Transactions on
DOI :
10.1109/TITS.2012.2205146