Litcius/Paper detail

Decomposed CNN for Sub-Nyquist Tensor-Based 2-D DOA Estimation

Hang Zheng, Chengwei Zhou, Sergiy A. Voroboyv, Qing Wang, Zhiguo Shi

2023IEEE Signal Processing Letters24 citationsDOIOpen Access PDF

Abstract

Direction-of-arrival (DOA) estimation using sub-Nyquist tensor signals benefits from enhanced performance by extracting structural angular information with multi-dimensional sparse arrays. Although convolutional neural network (CNN) has been employed to achieve efficient DOA estimation in challenging conditions, conventional methods demand excessive memory storage and computation power to process sub-Nyquist tensor statistics. In this letter, we propose a decomposed CNN for sub-Nyquist tensor-based 2-D DOA estimation, where an augmented coarray tensor is derived and used as the network input. To compress convolution kernels for efficient coarray tensor propagation, we develop a convolution kernel decomposition approach. This enables the acquisition of canonical polyadic (CP) factors containing compressed parameters. Performing decomposable convolution between the coarray tensor and the CP factors leads to resource-efficient DOA estimation. Our simulation results indicate that the proposed method conserves system resources while maintaining competitive performance.

Topics & Concepts

Convolution (computer science)Tensor (intrinsic definition)Kernel (algebra)Computer scienceNyquist–Shannon sampling theoremConvolutional neural networkAlgorithmDirection of arrivalMathematicsArtificial neural networkArtificial intelligenceTelecommunicationsDiscrete mathematicsAntenna (radio)Computer visionPure mathematicsAdvanced SAR Imaging TechniquesDirection-of-Arrival Estimation TechniquesSpeech and Audio Processing