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Evaluating the Scalability of Soft Foreign Object Detection in Dry Foods Using Sub-Terahertz Radar and Deep-learning techniques
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- Title
- Evaluating the Scalability of Soft Foreign Object Detection in Dry Foods Using Sub-Terahertz Radar and Deep-learning techniques
- Issued Date
- 2024-09-06
- Citation
- Song, Seungeon. (2024-09-06). Evaluating the Scalability of Soft Foreign Object Detection in Dry Foods Using Sub-Terahertz Radar and Deep-learning techniques. 49th International Conference on Infrared, Millimeter, and Terahertz Waves, IRMMW-THz 2024, 1–2. doi: 10.1109/IRMMW-THz60956.2024.10697861
- Type
- Conference Paper
- ISBN
- 9798350370324
- ISSN
- 2162-2027
- Abstract
-
This study evaluates the scalability of using sub-terahertz (THz) radar-based deep-learning techniques for automatically detecting soft foreign objects in dry foods. Previous research [1] has demonstrated that soft foreign objects can be detected with over 99% accuracy using deep learning models such as ResNet50-Fast R-CNN, combined with preprocessed transmission images. In this paper, we aim to assess the applicability to various food groups and packaging materials by constructing and analyzing a database of images acquired through sub-THz radar and area scanners. © 2024 IEEE.
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- Publisher
- IEEE Computer Society
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