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Channel-Coded Feature Maps for Computer Vision and Machine Learning

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Linköping Studies in Science and Technology Dissertation No. 1160

Channel-Coded Feature Maps for

Computer Vision and Machine Learning

Erik Jonsson

Department of Electrical Engineering Linköping 2008 Linköping Studies in Science and Technology

Dissertation No. 1160

Channel-Coded Feature Maps for

Computer Vision and Machine Learning

Erik Jonsson

Department of Electrical Engineering Linköping 2008 Erik Jonsson Channel-Co ded F eature Maps for Computer Vision and Mac hine Learning Link¨ oping 2008

(2)

Linköping Studies in Science and Technology Dissertation No. 1160

Channel-Coded Feature Maps for

Computer Vision and Machine Learning

Erik Jonsson

Department of Electrical Engineering Linköping 2008 Linköping Studies in Science and Technology

Dissertation No. 1160

Channel-Coded Feature Maps for

Computer Vision and Machine Learning

Erik Jonsson

Department of Electrical Engineering Linköping 2008 Erik Jonsson Channel-Co ded F eature Maps for Computer Vision and Mac hine Learning Link¨ oping 2008

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