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Feature detection / Artificial intelligence / Vision / Cluster analysis / Histogram of oriented gradients / K-means clustering / Statistics / Image segmentation / Feature / Edge detection / Visual descriptor / KadirBrady saliency detector
Date: 2010-08-06 03:43:10
Feature detection
Artificial intelligence
Vision
Cluster analysis
Histogram of oriented gradients
K-means clustering
Statistics
Image segmentation
Feature
Edge detection
Visual descriptor
KadirBrady saliency detector

Multiclass Multimodal Detection and Tracking in Urban Environments Luciano Spinello†, § † Social Rudolph Triebel§

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Source URL: europa.informatik.uni-freiburg.de

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