Ball Detection System for a Soccer on Wheeled Robot Using the MobileNetV2 SSD Method (original) (raw)
Puriyanto, R. D., Yunandha, I. D., Maghfiroh, H., Ma’arif, A., Furizal, & Suwarno, I. (2025). Ball Detection System for a Soccer on Wheeled Robot Using the MobileNetV2 SSD Method. Emerging Science Journal, 9(5), 2782–2796. https://doi.org/10.28991/ESJ-2025-09-05-028
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