Even better would be subsidized prediction markets. That way people train themselves as necessary to get results.
There'd be some kinks to work out, since you don't always get the answer handed to you after all the bets are in, but I think this would be a solvable problem. You could find ways of having occasional payouts based on cases where there is slam dunk evidence which is withheld and the professional bettors don't know if their decision will affect the defendant's sentence or just their pay. You could also try rewarding consistency between separate prediction markets in the hope that "our actual best guess" is the most salient Schelling point.
"The mathematical mistakes that could be undermining justice"
The linked paper is "Avoiding Probabilistic Reasoning Fallacies in Legal Practice using Bayesian Networks" by Norman Fenton and Martin Neil. The interesting parts, IMO, begin on page 9 where they argue for using the likelihood ratio as the key piece of information for evidence, and not simply raw probabilities; page 17, where a DNA example is worked out; and page 21-25 on the key piece of evidence in the Bellfield trial, no one claiming a lost possession (nearly worthless evidence)
Related reading: Inherited Improbabilities: Transferring the Burden of Proof, on Amanda Knox.