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Published byΛυσιστράτη Δάφνη Οικονόμου Modified over 6 years ago
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Centrality Bias Measure for High Density QR Code Module Recognition
Source: Signal Processing: Image Communication, Vol. 41, pp , 2016. Authors: I. Tkachenko, W. Puech, O. Strauss, J.-M. Gaudin, C. Destruel, and C. Guichard Speaker: Huang Peng-Cheng Date: 11/28/2018
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Outline Introduction Proposed centrality bias measure
Recognition methods using WMSE measure Experimental results Conclusions
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Introduction(1/4)
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Introduction (2/4)
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Introduction(3/4)
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Introduction(4/4)
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Proposed centrality bias measure(1/2)
The Weighted Mean Square Error (WMSE)measure N is the total number of weights used in these calculations.
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Proposed centrality bias measure(2/2)
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Recognition methods using WMSE measure(1/2)
Second step – recognition based on module characterization First step – module classification
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Experimental results(1/5)
--Recognition results
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Experimental results (2/5)
--Recognition results
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Experimental results (3/5)
--Recognition results
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Experimental results (4/5)
--Recognition results
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Experimental results(5/5) --Weight parameter (K) optimization
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Conclusions All proposed methods improved the recognition results by up to 5% The minimal recognition rate with our methods is 93%
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