Stack Overflow is a community of 4.7 million programmers, just like you, helping each other.

Join them; it only takes a minute:

Sign up
Join the Stack Overflow community to:
  1. Ask programming questions
  2. Answer and help your peers
  3. Get recognized for your expertise

I found many way to detect different shapes.But hard luck when i am going for physical object. As i read that to make a pattern file we should have black border around images.If i follow this concept and generate pattern then it detect images on printout.But when i go for the physical object then it is not necessary that Object has black border square shape around it.


Although i accept answer but my question remain unsolved.As there is no solution for detecting physical object till now.

Any further research and link are welcome.

share|improve this question
What libraries are you trying to use, and can you elaborate on your use case a little: Are you trying to detect and recognize a single physical object like a real teapot, or detect and distinguish between multiple physical objects like a teapot, a toy car, and a can of coke. Are you working at desktop scale, or outdoors? Or are you trying to recognize a picture of a real object like a picture of a teapot on a fiducial marker? – dabhaid Jan 18 '12 at 11:54
Thnx for you responce..I am trying to detect one object only like Teapot or bulb.And I am using AndAR library.So how make pattern file for physical object. – Sameer Jan 18 '12 at 12:02
Hi..Sameer!! finally after 3 years do you got any feasible solution to track any real object (Real car as marker) using Vuforia or any SDK? – Sanket Prabhu Apr 2 at 12:12
up vote 13 down vote accepted

The bad news is, you can't use AndAR to detect physical objects. AndAR is based on a fiducial marker approach, where the marker is made of two components: a solid border and an interior pattern. The pattern encodes a value that can be used to address a particular model to render on the marker, and the border makes it easy to determine the relative orientation of the marker to the device. Clearly this is just planar image recognition.

To do object recognition on a 3D object is a more complicated problem, and I don't know of any Android libraries that provide a turn-key solution, but recognizing just one object is probably feasible on a mobile device.

One possibility might be to investigate the available Android AR toolkits (Layar, Junaio, Qualcomm AR SDK) which all now support some image recognition. It may be that by taking images of your teapot at various rotations and using those as the images you want your app to match against that you might get this solution working, but keep in mind they are only designed to do planar matching on images, not real 3D objects, so the performance might not be great. (Well, the Metaio Mobile SDK Pro does 3D recognition and tracking, but it's very expensive).

While object recognition is perhaps best done by comparing camera frames with images of the object you wish to recognize (or by comparing image features from the camera frames with pre-computed image features etc), tracking is a different matter. If you want to accurately track your 3D object in 3D space you'll really need to have or build a 3D model of it, and for each frame determine point correspondences between the camera image and the 3D object for tracking. True unassisted (i.e. no depth-camera) 3D tracking is hard.

I hope this gives you some background you can use to evaluate your next steps.

Update: Qualcomm's Vuforia SDK allows you to track "multi targets", which are objects with a set of planar tracking surfaces with a fixed spatial relationship. If you made a "cube" different photos of the 6 sides of your object (teapot) that might work somewhat.

End of 2013 Update:

I have no experience with these, but:

Metaio now offer 3D tracking of CAD models:'s LinkAR promises object matching.

I would note the use of the word "matching" - I think the use case here is you know the object you want to overlay (a toy-box, and engine etc). Differentiating between multiple 3D objects may be entirely out of scope.

share|improve this answer
Thank you..i am very disappointed that except open source nature, there is no library available for physical object detection.Can you have sample to comparing two images using camera frame so that i can go for this.But i really appreciate your work. +1 – Sameer Jan 19 '12 at 6:34
Would you like an example of doing image matching from scratch, or how to set up e.g. Junaio Glue to do image matching? – dabhaid Jan 19 '12 at 11:56
This is a very broad question :) Perhaps the best approach for mobile would be the histogram matching method discussed here: - it's fast to computer, it's very easy to match against the frame, but it's not very robust, and you won't know exactly where in the image the object is located. – dabhaid Jan 19 '12 at 12:23
There are a great many approaches to image matching. If you describe the entire use case, maybe another approach might appear better, but histogram matching would be the most straightforward for recognizing a 3D object on a mobile device in real time. If you need the position (for augmenting), you could try to follow the recognition step with template matching. There are many more solutions, but they are more sophisticated. – dabhaid Jan 19 '12 at 12:37
The Vuforia link no longer works, maybe this was it: – Rui Marques Feb 15 '13 at 20:11

I recently read about research being doing on hierarchical shape vocabularies used for object representation. Of course, there is no library available for download, but in case you are interested in the general approach here you can find some papers.

Also you might be interested in this paper. It describes an algorithm for detecting objects based on a set of contours.

share|improve this answer
Currently i am working on different project as soon as i got time i will study your suggest link.Anyway thank you – Sameer Apr 27 '12 at 4:24

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.