2018
DOI: 10.4236/oalib.1105009
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An Investigative Analysis on Mapping X-Ray to Live Using Convolution Neural Networks for Detection of Genu Valgum

Abstract: Introduction: Bow Legs and Knock Knees are quite common in growing children, which usually affect the lower portions of the body, however such disorders usually do not have any pathological significance. In this paper, we investigate a method using deep learning to correctly draw a boundary between a physiologically normal knee and a genu valgum. Objective: To draw a decision boundary between what is classified as Normal and what is "Abnormal" i.e. a knee exhibiting features of Knock knees which is Genu Valgum… Show more

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“…e deep time residual model of the human activity identification system was established, which improved the performance of the human identification system. Bakshi [7] proposed a new human activity recognition structure based on multisensor data. e wearable sensor human activity recognition based on the imaging time series was proposed.…”
Section: Introductionmentioning
confidence: 99%
“…e deep time residual model of the human activity identification system was established, which improved the performance of the human identification system. Bakshi [7] proposed a new human activity recognition structure based on multisensor data. e wearable sensor human activity recognition based on the imaging time series was proposed.…”
Section: Introductionmentioning
confidence: 99%