Adaptive foreground-background segmentation using Gaussian Mixture Models (GMMs)
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Adaptive foreground-background segmentation using Gaussian Mixture Models (GMMs)
Personal capstone project for Udacity's Machine Learning Nanodegree (MLND).
Udacity机器学习进阶,非监督学习,创建用户分类
p0-Titanic - Udacity Machine Learning nanodegree (MLnd)
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在这个项目中,你将使用分类模型通过原料的不同组合预测所属的世界菜系。你将使用之前课程中所学习到的模型训练、测试技巧,并得到最终的分数,上传到 Kaggle 网站上。
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Projects for Udacity Machine Learning Nanodegree.
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