I have question. I have a Riemmanian manifold $\mathcal{M}$, like an $n$-dimensional regular surface in $\mathbb{R}^n$. And I have a smooth scalar field defined on this manifold $f:\mathcal{M} \to \mathbb{R}$ (positive function).
My actual problem is discretized but I'm trying to generalize it, I don't have much experience with optimization on manifold but I do know about smooth manifolds and riemannian manifolds.
I was wondering if the problem was more suitable for a standard optimization problem (if you have like a single chart maybe you take $f \circ \phi_{\alpha} : \mathbb{R}^n \to \mathbb{R}$ than this would cast in a standard optimization problem), or if problems like this (where you know in advance you have a manifold with some metric) are actually better tackled in this form. The idea would be to work out an algorithm at the last.
I have few references about optimization on manifolds and I'm slowly reading through them, it seems most of the time you have a closed form description of your manifold which actually seems to enable closed form expressions of gradients, hessians and retractions etc. In my case instead I don't really have that description (because I have a discretized mesh).
Is there any benefit you can highlight maybe? (Please let me know if I can give more details).