Probabilistic model for quick detection of dissimilar binary images

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Kuwait University, Department of Mechanical Engineering, P.O. Box 5969, Safat [1 ]
13060, Kuwait
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10.1117/1.JEI.24.5.053024
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We present a quick method to detect dissimilar binary images. The method is based on a probabilistic matching model for image matching. The matching model is used to predict the probability of occurrence of distinct-dissimilar image pairs (completely different images) when matching one image to another. Based on this model, distinct-dissimilar images can be detected by matching only a few points between two images with high confidence, namely 11 points for a 99.9% successful detection rate. For image pairs that are dissimilar but not distinct-dissimilar, more points need to be mapped. The number of points required to attain a certain successful detection rate or confidence depends on the amount of similarity between the compared images. As this similarity increases, more points are required. For example, images that differ by 1% can be detected by mapping fewer than 70 points on average. More importantly, the model is image size invariant; so, images of any sizes will produce high confidence levels with a limited number of matched points. As a result, this method does not suffer from the image size handicap that impedes current methods. We report on extensive tests conducted on real images of different sizes. © 2015 SPIE and IS&T.
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