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Deep Learning Approach for Radar-Based People Counting

Jae-Ho Choi, Ji-Eun Kim, Kyung‐Tae Kim

2021IEEE Internet of Things Journal52 citationsDOI

Abstract

With the development of deep learning (DL) frameworks in the field of pattern recognition, DL-based algorithms have outperformed handcrafted feature (HF)-based ones in various applications. However, there still exist several challenges in applying the DL framework to a radar-based people counting (RPC) task: The powerful representation capacity of a deep neural network (DNN) learns not only the desired human-induced components but also unwanted nuisance factors, and available data for RPC is usually insufficient to train a huge-sized DNN, leading to an increased possibility of overfitting. To tackle this problem, we propose novel solutions for the successful application of the DL framework to the RPC task from various perspectives. First, we newly formulate the preprocessing pipelines to transform the raw received radar echoes into a better-matched form for a DNN. Second, we devise a novel backbone architecture that reflects the spatiotemporal characteristics of the radar signals, while relieving the burden on training through a parameter efficient design. Finally, an unsupervised pretraining process and a newly defined loss function are proposed for further stabilized network convergence. Several experimental results using real measured data show that the proposed scheme enables an effective utilization of DL for RPC, achieving a significant performance improvement compared to conventional RPC methods.

Topics & Concepts

Computer scienceOverfittingArtificial intelligenceDeep learningPreprocessorRadarMachine learningTask (project management)Artificial neural networkProcess (computing)Pattern recognition (psychology)TelecommunicationsManagementOperating systemEconomicsAdvanced SAR Imaging TechniquesUnderwater Acoustics ResearchRadar Systems and Signal Processing
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