This follows standard Python conventions. Look at the results of these analogous expressions:
>>> a = [0, 1, 2, 3, 4, 5]
As you can see, one returns one item, while the other returns a list containing one item. This is always the way python works, and numpy is just following that convention, but at a higher dimension. Whenever you pass a slice rather than an individual item, a list is returned; this is true even if there are no items in the list, either because the end index is too low, or because the starting index is too high:
So in all situations, passing a slice means "return a sequence (along the given dimension)," while passing an integer means "return a single item (along the given dimension)."