元のcaffeの実装で 議論 がされていたのと、使っていたkeras-tensorflowの実装のレポジトリでも 議論されていました。
You can think of it as approximating a gaussian distribution for adjusting the prior box. Or you can think of it as scaling the localization gradient. Variance is also used in original MultiBox and Fast(er) R-CNN.
Probably, the naming comes from the idea, that the ground truth bounding boxes are not always precise, in other words, they vary from image to image probably for the same object in the same position just because human labellers cannot ideally repeat themselves. Thus, the encoded values are some random values, and we want them to have unit variance that is why we divide by some value. Why they are initialized to the values used in the code - I've no idea, probably some empirical estimation by the authors.