After some reading, I discovered that soft-voting simply places a Gaussian at each of the points (training examples) that are being voted on.
Ordinarily, we would simply vote for training examples that are the closest in the feature space, usually by adding one to the votes of the nearest neighbour(s). Instead, soft-voting simply uses the Gaussian probability of all training examples as a voting score, and accumulates the respective votes based on each score. This simply provides a more robust voting scheme as it is more cognisant of relative distances, particularly in higher dimensional spaces.
For more details, refer to Mitchell et al. A “soft” K-nearest neighbor voting scheme, 2001.
For an example of where it has been used, see Agarwal et al. Recovering 3D Human Pose from Monocular Images, 2005