If you enlarge an image with a factor of 6:1 (as in this case) you will have an image missing 5/6 of information that need to be "filled" with constructed information by mathematical means. In most cases interpolation (bi-cubic or otherwise) is used.
Unfortunately this will never result in anything sharp and high quality due to the nature of interpolating (basically averaging the constructed color points between the actual pixels). The picture will appear blurry no matter what you try to do in a case like this.
You can always throw a sharpening convolution on it, but the result will never be ideal.
For example, lets say I have a 2x1 pixel image that looks like this (enlarged for example):
If I now want to enlarge this image using interpolation I will end up with an image looking something like this:
As you can see two points between the black and white needed to be constructed. As there is no way of knowing how these points would look like (as they never existed in the image in the first place) we need to guess how they would look like by averaging the black and white points.
This will result in a "gray scale" that will result in the image looking blurry.
The more complex interpolation algorithms can make a better guess by using more points to get a bezier approach for the non-existing points and so forth, but it will always be a good guess at best.
Now, this example uses 2:1 enlarging. You can probably by now imagine then how 6:1 scale will appear.