I am an undergraduate student and it's my final year in this program. As in any computing degree, I have to do a project (individual) regarding any topic which comes under computing. I want to do something which comes under computer vision (object detection or tracking, to be exact). While searching about information on this topic I found out that there are already so many people who have done these types of projects. My question is that if I were to do a project like tracking an object in video, do I have to come up with my own algorithm or are there any algorithms available already? (I am familiar with java and started a bit of python)

Please guide me in picking up a topic and some idea about how to start or from where to start.

  • How much will you have studied image processing and computer vision prior to doing the project? The amount of previous experience would have a great impact on which projects are viable. – Hannes Ovrén Jun 22 '10 at 6:40
  • @kigurai i have not followed any course any CV, i am just interested in it – peedarpk Jun 22 '10 at 11:59
  • Then I would probably focus on implementing something that is cool but not too difficult. Tracking an object in video is not very difficult if there is no occlusion, to take a simple example. – Hannes Ovrén Jun 23 '10 at 15:16
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    I'm voting to close this question as off-topic because the question has nothing to do with a specific coding problem – arunkumar Sep 6 '17 at 1:05

I'd done a basic course in computer vision during my grad studies and one of the first projects we did was to implement a system that stitches a series of images into a seamless 360 degree panorama.

It involved:

  1. detecting discriminating features in the individual images (using SIFT feature extraction),
  2. the best matching features in the other images (feature matching),
  3. automatically aligning the pictures (homography estimation),
  4. determining their overlap and the relative positions of cameras (camera pose estimation),
  5. project the images into a cylindrical coordinate system (image warping),
  6. and then, finally, blend the resulting photos into a single seamless panorama(image blending).

The challenge with this project is to make the code efficient enough to allow for fast image stitching.

You can find a lot of resources on the internet to help you out with the project.

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    It's not really connected to object detection or tracking as were required. – Roman Shapovalov Jun 22 '10 at 12:19

If you want to do something really cool and interesting, try developing an activity detection algorithm in video. For example, "man leaving car", "people entering building" etc. It is not a trivial task and challenging enough for an UG thesis. You could use a toolkit such as OpenCV to do the ground-work in video processing and object detection etc, while you focus on the algorithm.

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  • As an FYI this is an active research area in places like DARPA and Defense departments. – Mikos Jun 20 '10 at 18:25
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    Unless one has already taken a few courses in computer vision I'd say that this is a far too advanced project. – Hannes Ovrén Jun 22 '10 at 6:37
  • Not necessarily, the OP could restrict to some specific activity and make it a low hanging fruit. – Mikos Jun 22 '10 at 10:43

There are many computer vision and image analysis algorithms already in existence. I took a class on it in grad school a few years back that was interesting, so I suggest looking through your university library or bookstore for a text on the topic to get a good handle on what's available.

There're real-world applications for this technology. Optical Character Recognition (OCR) is one field that has seen some high-profile application in a big way.

You picked an interesting topic, have fun! :)

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A starting point with python and openCV:


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  • The link does not work. Please update – Sunit Gautam Jul 6 '19 at 20:10

Below are some of the computer vision project ideas that you might find interesting:

  1. Learning a manifold of MNIST digits
  2. Visual words for image retrieval
  3. Image segmentation using non-parametric clustering
  4. Video classification using CNNs
  5. Image search based on CNNs and PCA embedding
  6. Kalman Filter Tracking
  7. Video compression based on superpixels
  8. Optical Character Recognition using neural nets
  9. Visual and Semantic Embedding (generating captions for images)

To get started with deep learning projects, I recommend the Keras library that runs on Theano/TensorFlow as backend with numerous examples. In addition, you will find the OpenCV tutorials to be really helpful. Also, you can find implementations of some of the projects above at the following github page.

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