Study on Enhancing Terminal Identification in Track and Field Using Digital X-Ray Photography Image

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Abstract:

Digital X-ray photography technology is under the control of the computer, to use one-dimensional or 2D X-ray detector to convert the captured image into digital signals directly to using image processing technology. It can realize the function of image analysis. We introduce X-ray photography technology into the terminal identification in track and field, and use the clustering algorithm to improve computer image clustering algorithm. Through capturing the digital signal of human head, arms and legs, it enhances the terminal recognition method in track and field. Finally we use MATLAB to calculate the captured image value of X-ray photography. Through calculation, motion capture and recognition of X-ray image are enhanced obviously. It provides a theoretical basis for researching on motion capture technology in track and field.

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Advanced Materials Research (Volumes 989-994)

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3851-3855

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July 2014

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© 2014 Trans Tech Publications Ltd. All Rights Reserved

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