Image recognition and Uniqueness detection - machine-learning

I am new to AI/ML and am trying to use the same for solving the following problem.
I have a set of (custom) images which while having common characteristics also will have a unique pattern/signature and color value. What set of algorithms should I use to have the pass in following manner:
1. Recognize the common characteristic (like presence of a triangle at any position in a 10x10mm image). If present, proceed, else exit.
2. Identify the unique pattern/signature to identify each image individually. The pattern/signature could be shape (visible to human eye or hidden like using an overlay shape using background image with no boundaries).
3. Store color tone/hue/saturation to determine any loss/difference (maybe because the capture source is different from the original one).
While this is in way similar to face recognition algo, for me saturation/shadow will matter while being direction independent.
I figure that using CNN may be the way to go for step#2 and SVN for step#1, any input on training, specifics will be appreciated. What about step#3, use BGR2HSV? The objective is to use ML/AI and not get into machine-vision.

Recognize the common characteristic (like presence of a triangle at any position in a 10x10mm image). If present, proceed, else exit.
In a sense, what you want is a classifier that can detect patterns in an image. However, we can train classifiers to detect certain types of patterns in images.
For example, I can train a classifier to recognise squares and circles, but if I show it an image with a triangle in it, I cannot expect it to tell me it is a triangle, because it has never seen it before. The downside is, your classifier will end up misclassifying it as one of the shapes it knows to exist: either square or circle. The upside is, you can prevent this.
Identify the unique pattern/signature to identify each image individually.
What you want to do is train a classifier on a large amount of labelled data. If you want the classifier to detect squares, circles, or triangles in an image, you must train it with a large amount of labelled images of squares, circles and triangles.
Store color tone/hue/saturation to determine any loss/difference (maybe because the capture source is different from the original one).
Now, you are leaving the territory of simple image labelling and entering the world of computer vision. This is not as simple as a vanilla image classifier, but it is possible and there are a lot of online tools to help you do this. For example, you may take a look at OpenCV. They have an implementation in python and C++.
I figure that using CNN may be the way to go for step#2 and SVN for
step#1
You can combine step 1 and step 2 with a Convolutional Neural Network (CNN). You do not need to use a two step prediction process. However, beware, if you pass the CNN an image of a car, it will still label it as a shape. You can, again circumvent this by training it on a million positive samples of shapes, and a million negative samples of random other images with the class "Other". This way, anything that is not a shape will get classified into "Other". This is one possibility.
What about step#3, use BGR2HSV? The objective is to use ML/AI and not
get into machine-vision.
With the inclusion of this step, there is no option but to get into computer vision. I am not exactly sure how to go about this, but I can guarantee OpenCV will provide you a way to do this. In fact, with OpenCV, you will no longer need to implement your own CNN, because OpenCV has its own image labelling libraries.

Related

How to detect hand palm and its orientation (like facing outwards)?

I am working on a hand detection project. There are many good project on web to do this, but what I need is a specific hand pose detection. It needs a totally open palm and the whole palm face to outwards, like the image below:
The first hand faces to inwards, so it will not be detected, and the right one faces to outwards, it will be detected. Now I can detect hand with OpenCV. but how to tell the hand orientation?
Problem of matching with the forehand belongs to the texture classification, it's a classic pattern recognition problem. I suggest you to try one of the following methods:
Gabor filters: it is good to detect the orientation and pixel intensities (as forehand has different features), opencv has getGaborKernel function, the very important params of this function is theta (orientation) and lambd: (frequencies). To make it simple you can apply this process on a cropped zone of palm (as you have already detected it, it would be easy to crop for example the thumb, or a rectangular zone around the gravity center..etc). Then you can convolute it with a small database of images of the same zone to get the a rate of matching, or you can use the SVM classifier, where you have to train your SVM on a set of images by constructing the training matrix needed for SVM (check this question), this paper
Local Binary Patterns (LBP): it's an important feature descriptor used for texture matching, you can apply it on whole palm image or on a cropped zone or finger of image, it's easy to use in opencv, a lot of tutorials with codes are available for this method. I recommend you to read this paper talking about Invariant Texture Classification
with Local Binary Patterns. here is a good tutorial
Haralick Texture: I've read that it works perfectly when a set of features quantifies the entire image (Global Feature Descriptors). it's not implemented in opencv but easy to be implemented, check this useful tutorial
Training Models: I've already suggested a SVM classifier, to be coupled with some descriptor, that can works perfectly.
Opencv has an interesting FaceRecognizer class for face recognition, it could be an interesting idea to use it replacing the face images by the palm ones, (do resizing and rotation to get an unique pose of palm), this class has three methods can be used, one of them is Local Binary Patterns Histograms, which is recommended for texture recognition. and why not to try the other models (Eigenfaces and Fisherfaces ) , check this tutorial
well if you go for a MacGyver way you can notice that the left hand has bones sticking out in a certain direction, while the right hand has all finger lines and a few lines in the hand palms.
These lines are always sort of the same, so you could try to detect them with opencv edge detection or hough lines. Due to the dark color of the lines, you might even be able to threshold them out of it. Then gather the information from those lines, like angles, regressions, see which features you can collect and train a simple decision tree.
That was assuming you do not have enough data, if you have then you go into deeplearning, just take a basic inceptionV3 model and retrain the last dense layer to classify between two classes with a softmax, or to predict the probablity if the hand being up/down with sigmoid. Check this link, Tensorflow got your back on the training of this one, pure already ready code to execute.
Questions? Ask away
Take a look at what leap frog has done with the oculus rift. I'm not sure what they're using internally to segment hand poses, but there is another paper that produces hand poses effectively. If you have a stereo camera setup, you can use this paper's methods: https://arxiv.org/pdf/1610.07214.pdf.
The only promising solutions I've seen for mono camera train on large datasets.
use Haar-Cascade classifier,
you can get the classifier model file then use it here.
Just search for 'Haarcascade detection of Palm in Google' or use below code.
import cv2
cam=cv2.VideoCapture(0)
ccfr2=cv2.CascadeClassifier('haar-cascade-files-master/palm.xml')
while True:
retval,image=cam.read()
grey=cv2.cvtColor(image,cv2.COLOR_BGR2GRAY)
palm=ccfr2.detectMultiScale(grey,scaleFactor=1.05,minNeighbors=3)
for x,y,w,h in palm:
image=cv2.rectangle(image,(x,y),(x+w,y+h),(256,256,256),2)
cv2.imshow("Window",image)
if cv2.waitKey(1) & 0xFF==ord('q'):
cv2.destroyAllWindows()
break
del(cam)
Best of Luck for your experience using HaarCascade.

How to use a Neural Network for face detection?

I'm trying to build a face detection system using a neural network written in theano. I am a bit confused as to what should be the expected output against which i would have to calculate the crossentropy. I don't want to know whether the face is present or not, i need to highlight the face in an image (find the location of the face). The size of the images is constant. But the size of the faces in the image is not. How do i go about that? Also, my webcam currently captures 480x640 images. Creating that number of neurons in the input layer would be very heavy on the system, how do i compress the images without losing any features?
There are many possible solutions, one of the easiest ones is to perform a sliding window search and ask a network "is there a face in this part of an image?" - and this is quite "standard" approach. In particular, you do it hierarchicaly - split image into 9 overlapping squares (I assume the image is square) and ask in each of them "is there a face in it?" by rescaling it to your network input. Next you again split the one answering "yes" into 9 squares and repeat. This way you can find face kind fast. Another would be to perform supervised segmentation where you try to predict which part of image (pixels/superpixels) belong to face and which do not. This is not exhaustive list, but should give you general idea how to proceed.
how do i compress the images without losing any features?
You do not. It is not possible. You will always lose some data when downscaling (lossless compression exists but it destroys structure, thus making classification extremely hard).
You should first create a training set from the images received through the web-cam. The training set must contain face and non-face images (such as apple, car and ...). For better generalization you may use some off-the-shelve data sets. After you trained the network on the images you can use the network to classify unseen images.
This approach is suitable if your goal is to only detect whether an image contains a face. However, if you want to identify faces (e.g. this face belongs to John and not other people) you need to train the network with the images of the people you want to do identification for. The number of classes in such network is equivalent to the number of distinct people.

find mosquitos' head in the image

I have images of mosquitos similar to these ones and I would like to automatically circle around the head of each mosquito in the images. They are obviously in different orientations and there are random number of them in different images. some error is fine. Any ideas of algorithms to do this?
This problem resembles a face detection problem, so you could try a naïve approach first and refine it if necessary.
First you would need to recreate your training set. For this you would like to extract small images with examples of what is a mosquito head or what is not.
Then you can use those images to train a classification algorithm, be careful to have a balanced training set, since if your data is skewed to one class it would hit the performance of the algorithm. Since images are 2D and algorithms usually just take 1D arrays as input, you will need to arrange your images to that format as well (for instance: http://en.wikipedia.org/wiki/Row-major_order).
I normally use support vector machines, but other algorithms such as logistic regression could make the trick too. If you decide to use support vector machines I strongly recommend you to check libsvm (http://www.csie.ntu.edu.tw/~cjlin/libsvm/), since it's a very mature library with bindings to several programming languages. Also they have a very easy to follow guide targeted to beginners (http://www.csie.ntu.edu.tw/~cjlin/papers/guide/guide.pdf).
If you have enough data, you should be able to avoid tolerance to orientation. If you don't have enough data, then you could create more training rows with some samples rotated, so you would have a more representative training set.
As for the prediction what you could do is given an image, cut it using a grid where each cell has the same dimension that the ones you used on your training set. Then you pass each of this image to the classifier and mark those squares where the classifier gave you a positive output. If you really need circles then take the center of the given square and the radius would be the half of the square side size (sorry for stating the obvious).
So after you do this you might have problems with sizes (some mosquitos might appear closer to the camera than others) , since we are not trained the algorithm to be tolerant to scale. Moreover, even with all mosquitos in the same scale, we still might miss some of them just because they didn't fit in our grid perfectly. To address this, we will need to repeat this procedure (grid cut and predict) rescaling the given image to different sizes. How many sizes? well here you would have to determine that through experimentation.
This approach is sensitive to the size of the "window" that you are using, that is also something I would recommend you to experiment with.
There are some research may be useful:
A Multistep Approach for Shape Similarity Search in Image Databases
Representation and Detection of Shapes in Images
From the pictures you provided this seems to be an extremely hard image recognition problem, and I doubt you will get anywhere near acceptable recognition rates.
I would recommend a simpler approach:
First, if you have any control over the images, separate the mosquitoes before taking the picture, and use a white unmarked underground, perhaps even something illuminated from below. This will make separating the mosquitoes much easier.
Then threshold the image. For example here i did a quick try taking the red channel, then substracting the blue channel*5, then applying a threshold of 80:
Use morphological dilation and erosion to get rid of the small leg structures.
Identify blobs of the right size to be moquitoes by Connected Component Labeling. If a blob is large enough to be two mosquitoes, cut it out, and apply some more dilation/erosion to it.
Once you have a single blob like this
you can find the direction of the body using Principal Component Analysis. The head should be the part of the body where the cross-section is the thickest.

Shape context matching in OpenCV

Have OpenCV implementation of shape context matching? I've found only matchShapes() function which do not work for me. I want to get from shape context matching set of corresponding features. Is it good idea to compare and find rotation and displacement of detected contour on two different images.
Also some example code will be very helpfull for me.
I want to detect for example pink square, and in the second case pen. Other examples could be squares with some holes, stars etc.
The basic steps of Image Processing is
Image Acquisition > Preprocessing > Segmentation > Representation > Recognition
And what you are asking for seems to lie within the representation part os this general algorithm. You want some features that descripes the objects you are interested in, right? Before sharing what I've done for simple hand-gesture recognition, I would like you to consider what you actually need. A lot of times simplicity will make it a lot easier. Consider a fixed color on your objects, consider background subtraction (these two main ties to preprocessing and segmentation). As for representation, what features are you interested in? and can you exclude the need of some of these features.
My project group and I have taken a simple approach to preprocessing and segmentation, choosing a green glove for our hand. Here's and example of the glove, camera and detection on the screen:
We have used a threshold on defects, and specified it to find defects from fingers, and we have calculated the ratio of a rotated rectangular boundingbox, to see how quadratic our blod is. With only four different hand gestures chosen, we are able to distinguish these with only these two features.
The functions we have used, and the measurements are all available in the documentation on structural analysis for OpenCV, and for acces of values in vectors (which we've used a lot), can be found in the documentation for vectors in c++
I hope you can use the train of thought put into this; if you want more specific info I'll be happy to comment, Enjoy.

Face Recognition Logic

I want to develop an application in which user input an image (of a person), a system should be able to identify face from an image of a person. System also works if there are more than one persons in an image.
I need a logic, I dont have any idea how can work on image pixel data in such a manner that it identifies person faces.
Eigenface might be a good algorithm to start with if you're looking to build a system for educational purposes, since it's relatively simple and serves as the starting point for a lot of other algorithms in the field. Basically what you do is take a bunch of face images (training data), switch them to grayscale if they're RGB, resize them so that every image has the same dimensions, make the images into vectors by stacking the columns of the images (which are now 2D matrices) on top of each other, compute the mean of every pixel value in all the images, and subtract that value from every entry in the matrix so that the component vectors won't be affine. Once that's done, you compute the covariance matrix of the result, solve for its eigenvalues and eigenvectors, and find the principal components. These components will serve as the basis for a vector space, and together describe the most significant ways in which face images differ from one another.
Once you've done that, you can compute a similarity score for a new face image by converting it into a face vector, projecting into the new vector space, and computing the linear distance between it and other projected face vectors.
If you decide to go this route, be careful to choose face images that were taken under an appropriate range of lighting conditions and pose angles. Those two factors play a huge role in how well your system will perform when presented with new faces. If the training gallery doesn't account for the properties of a probe image, you're going to get nonsense results. (I once trained an eigenface system on random pictures pulled down from the internet, and it gave me Bill Clinton as the strongest match for a picture of Elizabeth II, even though there was another picture of the Queen in the gallery. They both had white hair, were facing in the same direction, and were photographed under similar lighting conditions, and that was good enough for the computer.)
If you want to pull faces from multiple people in the same image, you're going to need a full system to detect faces, pull them into separate files, and preprocess them so that they're comparable with other faces drawn from other pictures. Those are all huge subjects in their own right. I've seen some good work done by people using skin color and texture-based methods to cut out image components that aren't faces, but these are also highly subject to variations in training data. Color casting is particularly hard to control, which is why grayscale conversion and/or wavelet representations of images are popular.
Machine learning is the keystone of many important processes in an FR system, so I can't stress the importance of good training data enough. There are a bunch of learning algorithms out there, but the most important one in my view is the naive Bayes classifier; the other methods converge on Bayes as the size of the training dataset increases, so you only need to get fancy if you plan to work with smaller datasets. Just remember that the quality of your training data will make or break the system as a whole, and as long as it's solid, you can pick whatever trees you like from the forest of algorithms that have been written to support the enterprise.
EDIT: A good sanity check for your training data is to compute average faces for your probe and gallery images. (This is exactly what it sounds like; after controlling for image size, take the sum of the RGB channels for every image and divide each pixel by the number of images.) The better your preprocessing, the more human the average faces will look. If the two average faces look like different people -- different gender, ethnicity, hair color, whatever -- that's a warning sign that your training data may not be appropriate for what you have in mind.
Have a look at the Face Recognition Hompage - there are algorithms, papers, and even some source code.
There are many many different alghorithms out there. Basically what you are looking for is "computer vision". We had made a project in university based around facial recognition and detection. What you need to do is google extensively and try to understand all this stuff. There is a bit of mathematics involved so be prepared. First go to wikipedia. Then you will want to search for pdf publications of specific algorithms.
You can go a hard way - write an implementaion of all alghorithms by yourself. Or easy way - use some computer vision library like OpenCV or OpenVIDIA.
And actually it is not that hard to make something that will work. So be brave. A lot harder is to make a software that will work under different and constantly varying conditions. And that is where google won't help you. But I suppose you don't want to go that deep.

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