Title :
A Statistical Model for Recreational Trails in Aerial Images
Author :
Predoehl, Andrew ; Morris, S. ; Barnard, K.
Abstract :
We present a statistical model of aerial images of recreational trails, and a method to infer trail routes in such images. We learn a set of text ons describing the images, and use them to divide the image into super-pixels represented by their text on. We then learn, for each text on, the frequency of generating on-trail and off-trail pixels, and the direction of trail through on-trail pixels. From these, we derive an image likelihood function. We combine that with a prior model of trail length and smoothness, yielding a posterior distribution for trails, given an image. We search for good values of this posterior using a novel stochastic variation of Dijkstra´s algorithm. Our experiments, on trail images and ground truth collected in the western continental USA, show substantial improvement over those of the previous best trail-finding method.
Keywords :
geophysical image processing; image representation; statistical analysis; statistical distributions; stochastic processes; Dijkstra´s algorithm; a posterior distribution; aerial images; groundtruth; image likelihood function; off-trail pixels; on-trail pixels; recreational trails; statistical model; stochastic variation; super pixel image representation; textons; trail direction; trail images; trail length; trail routes; trail smoothness; western continental USA; Computational modeling; Data models; Image segmentation; Proposals; Roads; Training data; Vectors; GIS; shortest path; statistical model; superpixels;
Conference_Titel :
Computer Vision and Pattern Recognition (CVPR), 2013 IEEE Conference on
Conference_Location :
Portland, OR
DOI :
10.1109/CVPR.2013.50