Acknowledgement
This research was a part of the project titled 'forest science-technology R&D program (2021383A00-2223-0101)', funded by the Korea Forestry Promotion Institute (Korea National Arboretum), Korea. This study has been funded by the following project of KITECH (Korea Institute of Industrial Technology), which is "Development of AI-based packaging manufacturing cost estimation system".
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