Deep Learning for Range-Doppler Map Single Frame Classifications of Cooking Processes

Marco Altmann, P. Ott, C. Waldschmidt
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引用次数: 10

Abstract

This paper proposes a Deep Learning approach for microwave frequency based classification tasks using single frame Range-Doppler maps. The Range-Doppler maps are recorded with a 77 GHz chirp-sequence radar sensor. The proposed networks are verified with an application to detect states like boiling in cooking processes. The network achieves an accuracy of 99.17% over six classes while being lightweight and fast. After training, the trained networks are analyzed with a technique that extracts the learned patterns of the network. The effect of pooling layers in convolutional neural networks is discussed due to the loss of detailed information in Range-Doppler maps.
烹饪过程距离-多普勒图单帧分类的深度学习
本文提出了一种基于单帧距离多普勒图的微波频率分类任务的深度学习方法。距离-多普勒地图是用77 GHz啁啾序列雷达传感器记录的。通过一个应用程序验证了所提出的网络,以检测烹饪过程中的沸腾等状态。该网络在六个类别中实现了99.17%的准确率,同时轻量级和快速。训练完成后,用一种提取网络学习模式的技术对训练好的网络进行分析。讨论了在卷积神经网络中,由于距离-多普勒图中详细信息的丢失而造成的池化层的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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