Raman hyperspectral imaging for detection of watermelon seeds infected with Acidovorax citrulli

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Abstract

The bacterial infection of seeds is one of the most important quality factors affecting yield. Conventional detection methods for bacteria-infected seeds, such as biological, serological, and molecular tests, are not feasible since they require expensive equipment, and furthermore, the testing processes are also time-consuming. In this study, we use the Raman hyperspectral imaging technique to distinguish bacteria-infected seeds from healthy seeds as a rapid, accurate, and non-destructive detection tool. We utilize Raman hyperspectral imaging data in the spectral range of 400-1800 cm−1 to determine the optimal band-ratio for the discrimination of watermelon seeds infected by the bacteria Acidovorax citrulli using ANOVA. Two bands at 1076.8 cm−1 and 437 cm−1 are selected as the optimal Raman peaks for the detection of bacteria-infected seeds. The results demonstrate that the Raman hyperspectral imaging technique has a good potential for the detection of bacteria-infected watermelon seeds and that it could form a suitable alternative to conventional methods.

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APA

Lee, H., Kim, M. S., Qin, J., Park, E., Song, Y. R., Oh, C. S., & Cho, B. K. (2017). Raman hyperspectral imaging for detection of watermelon seeds infected with Acidovorax citrulli. Sensors (Switzerland), 17(10). https://doi.org/10.3390/s17102188

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