Pornpanomchai C.Mahidol University2025-04-092025-04-092025-01-01ASEAN Journal of Scientific and Technological Reports Vol.28 No.1 (2025)https://repository.li.mahidol.ac.th/handle/123456789/109415The researchers developed a papaya seed germination evaluation system (PSGES) using ResNet50, a convolutional neural network, to evaluate papaya seed germination potential from single seed images. Using a comprehensive dataset of 12,600 papaya seed images, they allocated 11,600 images for training (with an 80/20 training-testing split) and 1,000 images for validation. The system achieved impressive performance metrics, with an overall accuracy of 99.58% and an average processing time of 1.4705 seconds per image. The training dataset demonstrated exceptional performance with 0.9958 accuracy, 0.9980 precision, 0.9972 recall, and 0.9976 F1-score. When compared to existing seed evaluation methods in the literature, PSGES showed superior precision at 99.59%, significantly outperforming Rice (ANN) at 92.80%, Beet (NIR) at 89.00%, and Chili (ANN) at 71.71%. The study revealed a papaya seed germination rate of 84.92%, calculated from (10,000 + 20 + 677 + 3) ÷ 12,600 × 100. Notably, ResNet50 demonstrated superior performance compared to six other CNN architectures tested, including AlexNet, GoogLeNet, Inceptionv3, ResNet18, ResNet101, and VGG16, in both training and validation performance metrics.Chemical EngineeringAgricultural and Biological SciencesImage Based Papaya (Carica Papaya Linn.) seed germination evaluation by ResNet50ArticleSCOPUS10.55164/ajstr.v28i1.2548042-s2.0-10500164515327738752