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

Having successfully installed opencv 2.0 with python bindings I'm starting to run into trouble and before I go any further I wondered if I should change to another option. As ezod on this post says:

"As a caveat, as of the 2.0 release, the new Python bindings are incomplete: many functions I would consider rather important missing. Meanwhile, the SWIG bindings are nothing short of agonizing to work with. The ctypes-opencv bindings (3rd party project), as of version 0.8.0, do not support OpenCV 2.0."

So, should I soldier on with 2.0 or should I go for ctypes? What am I missing out on either way?

I'm using OSX, python 2.5 and wanting to do tracking in 2d of moving object and neither a python nor machine vision expert!

share|improve this question
Time has solved my problem. The current version of opencv 2.2 has good python implementation. Finally getting back to this project having installed opencv using homebrew (see wiki page at willowgarage for instructions). – PhoebeB Dec 24 '10 at 13:34
Note that (at least right now) the default homebrew install for opencv doesn't install the C++ bindings (opencv.*), but only the cv namespace C bindings. Also, you may want to install ffmpeg first. The opencv namespace may be available also given installation of some packages (SWIG, for example?) – Dav Clark May 4 '11 at 2:45
up vote 1 down vote accepted

I'm using a self-compiled OpenCV 2.0 and it's built-in python binding. Up to now I was missing 2 or 3 functions (e.g. FindFundamentalMat). If you get the source code of OpenCV you find a text file interfaces/python/api that defines the parameter and return types for each OpenCV function that is available from Python. Upon recompilation an automatic generator will parse this file and build the python extension. For all the cases I've been through I found that adding an appropriate definition to the api for the functions I needed, then recompiling opencv, worked quite well.

share|improve this answer
Can you see any disadvantages of going this route instead of using ctypes? – PhoebeB Mar 8 '10 at 22:49
ctypes-opencv does not work with OpenCV 2.0 afaik (didn't check though). I just found a new one though, I never tried it but it looks extremely promising! It claims to have good numpy integration :-) – dudemeister Mar 12 '10 at 21:04
I just saw that pyopencv (link that i posted) is based on Boost.Python instead of ctypes. This is a very good decision since ctypes only supports flat function wrapping (you cannot directly wrap a C++ class but have to handcode C++ object wrapping by hand). This means that pyopencv could be even better since it wraps real OpenCV object (like Mat). It even supplies the neat numpy-indexing syntax directly into OpenCV arrays \o/ – dudemeister Mar 12 '10 at 21:13

A late answer. If you do not have to depend on earlier versions, and want to use OpenCV with Python, choose the latest stable version. Today it is OpenCV 2.3.1.

The major benefit of OpenCV ≥ 2.3 for Python users: a new cv2 module in addition to the old (backwards compatible) cv module. New cv2 module is much more pythonic and doesn't require manual memory allocations for intermediate data structures. Old cv module is more like direct translation of the C++ API.

For example, compare the new Python cv2.findContours (OpenCV ≥ 2.3):

findContours(image, mode, method[, contours[, hierarchy[, offset]]]) -> contours, hierarchy

It requires only three parameters, and can handle all memory allocations automatically, returns only the final result. Just one line of the user code.

Vs. the old cv.FindContours:

FindContours(image, storage [, mode [, method [, offset]]]) -> None

It requires the user to explicitly allocate "storage" before the call (+ 1 or 2 lines of code). It doesn't return the result, instead it saves it in the allocated storage (it works like a linked list, and the user has to write some loop to actually extract the data out of storage). Overall, more low-level, and more like C++ than Python. At least 4-5 lines of code in the common use case, instead of just one line with new cv2 module.

share|improve this answer
also some constants are not mapped across. Solutions to find them here:… – Neon22 Mar 29 '12 at 22:57

I'd recommend you use the official Python bindings to OpenCV 2.1 which as far as I've seen has feature parity with the C++ libraries. Most of them have either a pythonic wrapper, or a direct translation from the C++ version.

Python's OpenCV documentation isn't as complete as C++'s, but if you feel that the language advantages for prototyping are worth it, you'll be able to understand the Python usage from the C++ documentation.

Beware that much of the existing example code you'll find is from the previous versions and are incompatible (for example now everything resides under the cv package), but it's not hard to figure out how update it.

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.