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block which lets get this one running so the simple part is just go over there and then |
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you have the run selected cell so we select that one and run it so while it runs you would |
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so this is just a comment so if you can choose to run it but it doesnt actually do anything |
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you would be make basically classifying them into these different kinds of classes over |
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images itself and these are all color rgb color images so thats available directly within |
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the torch vision data sets so now we had imported torch vision data set over here |
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now i can go into data sets and then from there i input the cifar ten data set now the |
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point is when it imports locally so its its either imported somewhere earlier and then |
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is basically another folder which is created within my local directory so you see your |
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directory anyways because we did not upload the data set thats a huge bulky file to be |
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so if you have it already downloaded |
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purpose otherwise you need to download it from scratch so here like what it would do |
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is it just goes over there and sees that files are already downloaded and they are perfectly |
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and then within cifar ten batches it will be creating my training and test batches over |
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here ok so now once thats done so what i can do is i move back on to my main directory |
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over here and lets go to the next part of it so here what i am trying to do is get into |
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what is the length over there and then it just converts it to a string and prints it |
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training and testing data set is of ten thousand images now once thats done the next part is |
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we come down over here which is feature extraction on a single image so initially what we will |
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be doing is lets lets see what these images look like so what i am doing is i take down |
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one of these images which is at the zero , zero location so this is the first image present |
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format so that will typically be coming down as some sort of a container with me now that |
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its its really fuzzy to understand but this is basically if you like really go far off |
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what you are going to do is you would need the main image array so thats present over |
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is basically the number of points you would be taking around the central point |
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so you remember clearly from our earlier discussions on from in the last class on lbp where you |
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you would be getting eight such neighbors along that point which are at a distance separation |
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you would do now what it allows within these functions is that you can choose down any |
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number of neighbors you can choose four five six seven typically for the three cross three |
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that that would not be a uniform pixel kind of a distribution but you can interpolate |
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and go down to those kind of forms so what we choose to do is we take a circular neighborhood |
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this lbp feature on a point to point basis looks like so we compute this one and this |
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hard to actually find out whether there is a frog or something or not from so many points |
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there for for this from this histogram then that would help you to get down the energy |
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and entropy as well |
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now once you have all of these you can basically use energy and entropy as two different distinct |
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whole image needs to be represented in terms of one single scalar value and a set of those |
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multiple number of scalar values which will be your features which describe this image |
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so for that what we do is we just evaluate this part over here and i get down that lbp |
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energy of this much and lbp entropy of this much is what defines all of this together |
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present in this image ok now once that goes down the next part is to find it out on the |
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co occurrence matrix ok so in a co occurrence matrix what i need to do is i need to get |
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there is what is the orientation of your vector whether its at zero degrees forty five degree |
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number two fifty six is basically the number of gray levels you have in your gray level |
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are basically to show down how to handle down the boundary conditions present over there |
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one the first scalar value is basically to get done contrast second scalar value is to |
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in getting and this are the different measures for that one particular image now from there |
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the next one is to get into wavelets and do it so for we choose to do it with gabor filters |
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now as you remember from your gabor filtered equations in the last class so there would |
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down over there as well as what is your frequency at which you would like to operate |
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now the other part is what is the angle at which it is located and what are the variables |
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also choose to give them so you can read down with within the details more over there now |
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given that at any point you will be getting down to components of your wavelet decomposition |
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imaginary part and this is basically the consolidated magnitude response over there the next part |
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than these kind of matrix representation and they are basically your probability energy |
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now this is till now what we have done was just for one of these images which was at |
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the first location within my training data set now in order to do it for training i would |
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define some sort of a matrix which is called as the training features matrix so this is |
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a two d matrix which is the number of rows in this matrix is equal to the length of the |
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training data set the number of columns is equal to the length of features now how many |
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features we found out was basically two plus five plus two and that makes it nine features |
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which we are going to have over here now for this part what we do is we write down first |
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over the whole length of the training data set once you get over the whole length of |
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the training data set you need to find out one feature at a time now once you have one |
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feature at a time coming down you need to calculate all of these features one sorry |
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filters now once you have all of them you need to concatenate that into one row matrix |
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and then you keep on concatenating one below the other and you get your two d matrix coming |
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down so if we run this part you see this verbose commenting coming down and then it keeps on |
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running so together that would finish it off there might be certain warnings at positions |
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it over fifty thousand of those but if you look through it so its its pretty much fast |
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so tidy slow as well in the duration of where we are speaking you can already see this quite |
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going on so we just have a verbose ,nd given down over there so if you would like |
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to get rid of this part then the simple task is that you dont keep one printing this part |
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to show down how many of them are done and and then you just just need to wait till its |
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out on your test set as well |
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do a basic revision in that case so what i did was i have my pre defined precursor coming |
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the type of the data set or not but say if you are writing a full fledged code over there |
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all images in your data set now if you dont want to look into whats getting extracted |
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still keeps on running over here so lets see how far yeah it should be quite close to finishing |
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time now once your features are extracted the next part of your code is basically to |
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are extracted the next part is to go down on your test data set and also extract out |
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features and completely show it and and then eventually you can go and basically save down |
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yeah so now this is over and the next part of it is basically to get down your testing |
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out all the features is basically to get down get each feature dynamically varying within |
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to be applied within your testing set otherwise the nature of normalizations are going to |
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file and then just print it all so once this part is complete you need to get down extract |
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features for your training one and for your testing set then run the feature normalization |
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on images some basic operations using the classical way so as you start with any kind |
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you have in that big corpus of pixel space available to you now from that when we eventually |
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go down as you have seen that there are features which you have extracted out the next question |
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as what we had defined in the first few lectures was that you need to be able to relate certain |
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called as a classification problem ok |
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now in order to make it even simpler so what it would essentially mean is that if i have |
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these are all may be scalar parameters now if i arrange these scalar parameters into |
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sort of a matrix thats what we would call down as a vector or in the standard parlance |
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of our definitions we would also be calling this as a feature vector now once you have |
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that feature vector given to you how do i associate a feature vector to one single categorical |
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itself and now from that perspective here is where we start down so what todays lecture |
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neuron model and from there we will go down to ah the neural network formulation and then |
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would define what a neuron is so as in a neural network you would always have a neuron |
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