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Underwater target recognition method based on t-SNE and stacked nonnegative constrained denoising autoencoder

机译:基于T-SNE的水下目标识别方法和堆叠非负受约束脱色自动化器

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摘要

Underwater targets recognition is a difficult task due to the specific attributes of underwater target radiated noises, low signal to noise ratio and so on. In this paper, the input data optimization method and recognition model were researched. The underwater target radiated noise spectrum was chosen as the original feature. The t-distributed stochastic neighbor embedding (t-SNE) algorithm was used to reduce the dimensionality of the original spectrum segments divided by frequency. The optimal features can be obtained by analyzing the separability. Then the stacked nonnegative constrained denoising autoencoder (SNDAE) model was established to recognize the optimal features. The experimental signal spectra were processed by above methods. The results show that the recognition accuracy of SNDAE is higher than that of other contrastive methods. And the frequency of input band with the highest recognition accuracy is approximately the same as that with the best separability based on t-SNE, indicating that the above method can improve the recognition accuracy and efficiency.
机译:水下目标识别是由于水下目标辐射声噪声的特定属性,低信噪比等,这是一项艰巨的任务。本文研究了输入数据优化方法和识别模型。选择水下目标辐射噪声谱作为原始特征。 T分布式随机邻居嵌入(T-SNE)算法用于降低由频率除以原始谱段的维度。通过分析可分离性可以获得最佳特征。然后建立堆叠的非负受约束的去噪自动化器(SNDAE)模型以识别最佳特征。通过上述方法处理实验信号光谱。结果表明,SNDAE的识别精度高于其他对比方法的识别精度。并且具有最高识别精度的输入带的频率与基于T-SNE的最佳可分性的输入带的频率大致相同,表明上述方法可以提高识别准确性和效率。

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