Announcing Stack Overflow Documentation

We started with Q&A. Technical documentation is next, and we need your help.

Whether you're a beginner or an experienced developer, you can contribute.

Sign up and start helping → Learn more about Documentation →

Are there any methods in the computer vision literature that allows for detecting transparent glass in images? Like if I have an image of a car, can I detect windows? etc...

All methods I've found so far are active methods (i.e. require calibration, control over the environment or lasers). I need a passive method (i.e. all you have is an image, or multi-view images of the object and thats it).

share|improve this question
up vote 3 down vote accepted

Here is some very recent work aimed at detecting transparent objects in a general setting.



share|improve this answer
That is quite helpful, thanks a lot. – OSaad Apr 20 '11 at 14:35

Just a wild guess: if the camera is moving and you perform a 3D reconstruction of the scene, you could detect large discontinuities of the reconstructions at the reflected regions.

share|improve this answer
Any comment for the downvote? – ssegvic Apr 7 '11 at 13:35
I wasn't the downvoter, but anyway I'm seeking transparency detection not reflection, There is a lot of work on detecting reflection (specularity) on objects and detecting mirrors. – OSaad Apr 8 '11 at 5:31
Well, if the transparency is perfect, then there is nothing to detect. Consequently it appeared to me that you must be looking for deficiencies such as dirt or reflections. In particular, all car windows I can observe from my office have at least some reflection on them. Hence the idea. – ssegvic Apr 8 '11 at 10:50
Yea but a piece of metal or a mirror can be reflective and dirty too. This way u only provided a "possible target", but u still don't know if its transparent or not, I think transparency is something rather semantic that has to be detected in context :S – OSaad Apr 14 '11 at 17:02

I think you should provide a clearer description of what your are trying to achieve.
The paper "Deriving intrinsic images from image sequences" shows some results with transparencies.
If you are close enough, you may be able to use the glass refraction (a la Snell's law) to detect the glass from multiple views.
I also think that reflections (specular regions) are a good indication for curved glasses.

share|improve this answer

I think what you looking for is detection of translucent regions. There is very limited work here since it is a very hard problem. Basically it is a major chicken and egg problem. Translucent regions cause almost all fundamental image processing tools to fail (e.g. motion estimation, feature matching, tracking, etc...). Yet you must use such tools to detect translucent regions. Anyway, up to my knowledge this is the most recent piece of work in this area and I doubt there is any other.


It is published in CVPR which is a top conference in Computer Vision.

share|improve this answer

Detecting it is one thing, but separating is another. You can do separation because its like putting 2 sounds with 1 of the sounds 180 degree out of phase. If you manage to learn the phasing sound by itself, you have the other sound automatically, so you could then learn that one too. Im stuck at the point where I can only superimposesubtract them if I learnt them by themselves. So the real gain here is somehow learning this addup, as 2 separate things, even though you never saw them apart.

share|improve this answer

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.