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#1
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paper: ZebraVision 3.0 – Team 900
Thread created automatically to discuss a document in CD-Media.
ZebraVision 3.0 – Team 900 by ForeverAlon |
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#2
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Re: paper: ZebraVision 3.0 – Team 900
Zebravision 3.0 is Team 900's 2015 initiative to take robot vision in FRC farther. In the 2015 season we successfully integrated cascade classification using feature detection as well as an automated tracking and navigation system. This paper details what we did and how we did it, as well as offering a tutorial so that other teams can use this application. If you have any questions please post here and someone who worked on the paper will respond.
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#3
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Re: paper: ZebraVision 3.0 – Team 900
What cost function did you use in your classifier?
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#4
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Re: paper: ZebraVision 3.0 – Team 900
It seems that you didn't fully utilize the classifier. You classify a bin for instance, then compute on that. Extremely inefficient considering you could simply use a CNN and a SVM to compute anything you want about the object, including distance and rotation to it.
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#5
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Re: paper: ZebraVision 3.0 – Team 900
These are the parameters we used for a typical run : https://github.com/FRC900/2015Vision..._14/params.xml
Not sure the opencv_traincascade code exposes the option you're asking about, so if it isn't in there it'll be hard-coded in the OpenCV source. |
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#6
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Re: paper: ZebraVision 3.0 – Team 900
I figured you guys did that, just wanted to make sure though.
Will you be releasing an analysis of your data? Not your training sets, but rather a statistical analysis of the classifier's output. |
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#7
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Re: paper: ZebraVision 3.0 – Team 900
Wow, great job! Can't wait to see what you guys do next!
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#8
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Re: paper: ZebraVision 3.0 – Team 900
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Seriously though... we might but if we do then it will take us some time to get it done. We'll do our best to push students towards publishing whatever we can though. It's the second paper we've published on vision and I think it came out pretty well considering. |
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Re: paper: ZebraVision 3.0 – Team 900
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#10
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Re: paper: ZebraVision 3.0 – Team 900
Thanks! Neither can we. We've got some plans we're working on though. Something about depth perception and neural networks last I heard.
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#11
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Re: paper: ZebraVision 3.0 – Team 900
I do have one more request, could you post the raw data that you analyze?
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#12
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Re: paper: ZebraVision 3.0 – Team 900
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#13
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Re: paper: ZebraVision 3.0 – Team 900
For starters, when nothing is moving, how much do your output variables change? How much noise does your output data have? Can said noise be classified as Gaussian? What is the exact relationship between resolution and frame rate? How much precision do you lose / gain with different resolutions?
Last edited by faust1706 : 01-06-2015 at 14:40. |
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#14
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Re: paper: ZebraVision 3.0 – Team 900
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Re: paper: ZebraVision 3.0 – Team 900
I am struggling to find the time for this inquiry. Here is a question you may be able to answer for me: How often did you get false positives? False negatives?
I'll eventually find the time to compile all the data of the vision programs in FRC the past few years: 341's, 1706's and yours, and do an analysis on each one. But that might be tricky considering I have zero of the materials they were all designed for. Here is what @bernini (if we all start to do this, eventually chief delphi will add the feature, one can hope) was talking about with CNN (convolutional neural network) and SVM (support vector machine): http://yann.lecun.com/exdb/publis/pd...g-lecun-06.pdf Your implementation of the same algorithm for FRC would yield better results due to the smaller scale of the network and SVM, I would suspect it to be 100 percent accurate in detecting with so few classes to classify something into (ball, robot, goal, etc..). If you do go the neural network route, I highly suggest you have everyone involved in it watch Andrew Ng's class on machine learning on coursera. I find it to be the best introduction to the topic. Fortunately, there is an amazing tool at your disposal for deep learning with (convolutional) neural networks: caffe. It is not as user friendly as it could be, but it is an extremely powerful tool. Something to keep you busy in the offseason (I would not leave the task of learning caffe plus getting a data set as well as designing a network during build season). |
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