How do I create a 3D stereoscopic image from a 2D image using MATLAB?
Either I'm misunderstanding your question (people have already pointed out that it's not clear), or you are misunderstanding the way 3D vision works. You don't "see 2D image using 3D glass". 3D vision is achieved by serving two different images, left image and right image, to the left eye and right eye, respectively. At a fundamental level MATLAB doesn't have anything to do with it.
So, in absence of an easily understandable or coherent question, the best I can do is assume you want something like this: you have is a single 2D image, but you still want to "seen into 3d image format". In that case, you need to somehow split that single image into two new images:
This isn't trivial. Generally, you start by inferring the depth of each pixel in the 2D image. Since you're "guessing" the depth information, the two new images won't be a perfect representation of a 3D scene.
Next, you separate your image into layers using that depth information. It will essentially look like a pop-up cutout from a children's book:
The more layers you can come up with, and the more accurate your depth estimation is, the more realistic your 3D representation will be.
Finally, you project that layered representation back onto 2D from two different positions -- one for the left eye, and one for the right eye. This gives you the two different images you needed.
The second video you linked to describes the simplified creation of what is commonly known as an anaglyph image. It requires 3D red-cyan glasses -- these are not the polarized glasses they use in most 3D theaters now. The reason I say simplified is that it doesn't discriminate between the foreground and background.
For best effect, you'd separate the foreground from the background, and apply the approach only to the foreground. This is because typically background has infinite depth and doesn't change when going from mono to stereo vision. In the case of the piano, everything is more or less foreground, so the approach works.
The algorithm the video describes is:
Here's some Python/OpenCV code I wrote:
Here's a similar image to what's used in the video:
Here's the output:
Unfortunately I don't have 3D red-cyan glasses to verify that this works. But it seems like it should, at least in theory. Perhaps somebody can correct me if I've made a mistake.