Abstract:Extracting micromotion features from human radar echo data is a key to human target classification. Aimed at the problem that the traditional spectrum structure is hard to realize the fine recognition of similar body size, a method of human body identity authentication based on stack sparse autoencoder is proposed. First of all, this paper constructs a stacksparse selfencoder network, performs unsupervised pretraining by using human micromotion data, and extracts human micromotion features at different layers. Then the paper inputs the features into the softmax classifier for supervised training, and adjusts the network parameters by crossvalidation. Finally, the paper uses the trained network for human target classification. The average recognition rate of 3 people on the measured data set of different people reaches 83%, and is better than that by the method of extracting spectral structure feature classification.