Recognition of Human Activities Using Continuous Autoencoders with Wearable Sensors

Volume: 16, Issue: 2, Pages: 189 - 189
Published: Feb 4, 2016
Abstract
This paper provides an approach for recognizing human activities with wearable sensors. The continuous autoencoder (CAE) as a novel stochastic neural network model is proposed which improves the ability of model continuous data. CAE adds Gaussian random units into the improved sigmoid activation function to extract the features of nonlinear data. In order to shorten the training time, we propose a new fast stochastic gradient descent (FSGD)...
Paper Details
Title
Recognition of Human Activities Using Continuous Autoencoders with Wearable Sensors
Published Date
Feb 4, 2016
Journal
Volume
16
Issue
2
Pages
189 - 189
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