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Limitations of Geometric Hashing in the Presence of Gaussian Noise

Author(s)
Sarachik, Karen B.
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Abstract
This paper presents a detailed error analysis of geometric hashing for 2D object recogition. We analytically derive the probability of false positives and negatives as a function of the number of model and image, features and occlusion, using a 2D Gaussian noise model. The results are presented in the form of ROC (receiver-operating characteristic) curves, which demonstrate that the 2D Gaussian error model always has better performance than that of the bounded uniform model. They also directly indicate the optimal performance that can be achieved for a given clutter and occlusion rate, and how to choose the thresholds to achieve these rates.
Date issued
1992-10-01
URI
http://hdl.handle.net/1721.1/5956
Other identifiers
AIM-1395
Series/Report no.
AIM-1395
Keywords
object recognition, error analysis, geometric hashing, sGaussian error models

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