2018年第65回応用物理学会春季学術講演会

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一般セッション(ポスター講演)

3 光・フォトニクス » 3.9 テラヘルツ全般

[19a-P3-1~14] 3.9 テラヘルツ全般

2018年3月19日(月) 09:30 〜 11:30 P3 (ベルサール高田馬場)

09:30 〜 11:30

[19a-P3-11] Pattern Recognition with Machine Learning on Terahertz Images

Dmitry S Bulgarevich1,2、Hideaki Kitahara1、Masahiro Kusano2、Takashi Furuya1、Jessica Afalla1、Valynn Mag-usara1、Masahiko Tani1、Makoto Watanabe2 (1.FIR Center, University of Fukui、2.National Institute for Materials Science)

キーワード:THz imaging, THz nondestructive inspection, Image processing

The terahertz time-domain spectroscopy (THz-TDS) imaging is inherently the hyperspectral technique with sliced imaging in frequency/time domains. It has a promising potential for non-destructive testing (NDT) of various materials. However, the associated large image data volumes and complex image contrasts could make the analysis and interpretation very difficult and time consuming. In recent years, the dramatic progress had been made in automated image pattern recognition techniques for automobile, medical, biological, agricultural, IT, security, etc. applications. With suitable algorithm, image database, and powerful computers, the large volumes of image data could be classified in a short time with high accuracy. In this respect, we studied the feasibility of pattern recognition on THz-TDS images of rusted steel with Random Forest machine learning algorithm. It was found that for single hyperspectral set of THz images, the Classifier can be created with out-of-bag (OOB) error below 1 % and reasonable segmentation results. For time-apart measured image datasets, the standardized procedure of image preprocessing was necessary to create/apply the single Classifier. Its usage for different sets was limited to frequencies of 1±0.2 THz. More advanced image preprocessing or/and Random Forest code is necessary to improve the Classifier robustness. Here, it should be stressed that application of such technique is novel for THz-TDS imaging, NDT, and materials science fields. In principle, very complex patterns could be auto-classified and analyzed with this technique.