RELATIVE ISOMETRIC EMBEDDINGS OF RIEMANNIAN MANIFOLDS IN Rn
نویسندگان
چکیده
We prove the existence of C isometric embeddings, and C∞ approximate isometric embeddings, of Riemannian manifolds into Euclidean space with prescribed values in a neighborhood of a point.
منابع مشابه
Relative Isometric Embeddings of Riemannian Manifolds
We prove the existence of C1 isometric embeddings, and C∞ approximate isometric embeddings, of Riemannian manifolds into Euclidean space with prescribed values in a neighborhood of a point.
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