Prediction of Human Activity Recognition Using Convolution Neural Network Algorithm in Comparison with Grid Search Algorithm

P.Ganesh, P.Jagadeesh, Josiah Samuel, R. Scholar, Junior Research Fellow
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引用次数: 1

Abstract

The objective of this piece is to find human activity recognition not through the use of grid search but rather through the application of convolution neural network algorithms. The calculation is carried out by utilising G-power 0.8 with alpha, and the confidence interval is established at 95%. Fifty people will serve as the sample size for the algorithm that uses convolution neural networks to make predictions about human activity recognition (Group 1 equals twenty-five, and Group 2 equals twenty-five). In comparison, the accuracy that can be achieved through grid search is 89.6012, while the accuracy that can be achieved through the Novel Convolution Neural Network is 98.6512. The performance of the Novel Convolution Neural Network is noticeably superior to that of grid search because it incorporates the accuracy of both methods into a single solution.
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基于卷积神经网络的人类活动识别预测与网格搜索算法比较
这篇文章的目的不是通过使用网格搜索,而是通过卷积神经网络算法的应用来找到人类活动识别。采用带alpha的G-power 0.8进行计算,置信区间为95%。50个人将作为算法的样本大小,该算法使用卷积神经网络对人类活动识别进行预测(第一组等于25,第二组等于25)。相比之下,网格搜索的准确率为89.6012,而Novel Convolution Neural Network的准确率为98.6512。新型卷积神经网络的性能明显优于网格搜索,因为它结合了两种方法的精度到一个单一的解决方案。
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