Problem **1** is essentially finite dimensional and quite geometric in nature. For a real square matrix $M$ of order $n$ and $1\le p\le\infty$ denote $\big| M\big|_p$ its [$p$-trace norm][1]. Consider the $n\times n$ matrix $Q$ with entries $Q_{ij}:=(q_0^i, q_1^j)_{ 2}:=\int_0^1q_0^i(x)q_1^j(x)dx$. Then, for any $A\in SO(n)$ $$\|q_0 - Aq_1\|_2^2:=\int_0^1\big|q_0(x) - Aq_1(x)\big|^2dx=\|q_0\|_2^2 +\|q_1\|_2^2- 2\int_0^1\sum_{ij} A_{ij}q_0^i(x) q_1^j(x)dx $$ $$=\|q_0\|_2^2 +\|q_1\|_2^2- 2 \sum_{ij} A_{ij}Q_{ij}=\|q_0\|_2^2 +\|q_1\|_2^2- 2 \operatorname{tr}(A^TQ). $$ Therefore, the initial minimization reduces (up to an additive constant) to maximizing the trace of a matrix in the $SO(n)$-orbit of $Q$ by (left or right) multiplication. Consider first the case $\operatorname{det}(Q)\ge0$. For any $A\in SO(n)$ we have, by duality, $$ \operatorname{tr}(A^TQ)\le |A|_\infty |Q|_1= |Q|_1 .$$ The nuclear norm of $Q$ on the RHS is indeed attained by a suitable $A\in SO(n)$ on the LHS, and here the SVD of $Q$ may help. Write $Q=UDV^T$ with $U, V$ in $SO(n)$ and $D$ non-negative and diagonal, and choose $A:=UV^T$; then $A^TQ=VDV^T$ and by invariance of the trace $\operatorname{tr}(A^TQ)=\operatorname{tr}(D)= |Q|_1 .$ $$*$$ Note that the latter optimization problem is also equivalent to a point-set distance minimization, that is, finding the closest rotation to $Q$ in the Frobenius distance. Indeed, for any rotation $A$, since $\big|A\big|_2^2=n$ we have $$ \big| A-Q\big|_2^2 = n + \big|Q\big|_2^2 -2\operatorname{tr}(A^TQ)$$ so that maximizing $\operatorname{tr}(A^TQ)$ is again equivalent to minimizing a distance. [1]:https://en.wikipedia.org/wiki/Schatten_norm