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i try to execute this code that picks up 70 images extraxt hog feature and would be put in a classifier but but it gives me an error: hog_image = hog_image_rescaled.resize((200, 200), Image.ANTIALIAS) TypeError: an integer is required

I do not understand why because with a single image is correct and arrive at the end of the code.

#Hog Feature

from skimage.feature import hog
from skimage import data, color, exposure
import cv2
import matplotlib.pyplot as plt
from PIL import Image
import os
import glob
import numpy as np
from numpy import array

listagrigie = []

path = 'img/'
for infile in glob.glob( os.path.join(path, '*.jpg') ):
    print("current file is: " + infile )
    colorato = Image.open(infile)
    greyscale = colorato.convert('1')

    #hog feature
    fd, hog_image = hog(greyscale, orientations=8, pixels_per_cell=(16, 16),
                    cells_per_block=(1, 1), visualise=True)

    plt.figure(figsize=(8, 4))
    plt.imshow(grigiscala, cmap=plt.cm.gray)
    plt.title('Input image')

    # Rescale histogram for better display
    hog_image_rescaled = exposure.rescale_intensity(hog_image, in_range=(0, 0.02))
    print("hog 1 immagine shape")

    hog_image = hog_image_rescaled.resize((200, 200), Image.ANTIALIAS)    

print("ARRAY of gray matrices")

grigiume = np.dstack(listagrigie)

from sklearn import svm, metrics

n_samples = len(listagrigie)
data = grigiume.reshape((n_samples, -1))
# Create a classifier: a support vector classifier
classifier = svm.SVC(gamma=0.001)

# We learn the digits on the first half of the digits
classifier.fit(data[:n_samples / 2], target[:n_samples / 2])

# Now predict the value of the digit on the second half:
expected = target[n_samples / 2:]
predicted = classifier.predict(data[n_samples / 2:])

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up vote 2 down vote accepted

You should rescale the source image (named colorato in your example) to (200, 200), then extract the HOG features and then pass the list of fd vectors to your machine learning models. The hog_image are just meant to visualize the feature descriptors in a user friendly manner. The actual features are returned in the fd variable.

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it's possible that fd list is made of: [ 0. 0. 0. ..., 0. 0. 0.] ? the measure results, obviously are a sequence of 0 – postgres Jan 5 '13 at 22:54
I am not sure, do you have uniformly colored areas in your picture? Have you tried to check the values of numpy.max(fd) and numpy.mean(fd)? – ogrisel Jan 5 '13 at 23:56
ok it give me this: max: 0.999636109832 and media 0.104345580011, so i think i have to change something 'cause measure results of precision, recall, f1-score and support are all 0 and also avg / total when i print this: print "Classification report for classifier %s:\n%s\n" % ( classifier, metrics.classification_report(expected, predicted)) – postgres Jan 6 '13 at 1:06
Have you tried to find the optimal value for C and gamma? Have you tried a simpler model such as LinearSVC? – ogrisel Jan 6 '13 at 1:36
i tried to change gamma value, kernel (linear and rbf) but results are the same.i tried to run this code (scikit-learn.org/stable/modules/svm.html) and show me 4 images with a red background and only 1 dot. I know, only, that something goes wrong. I think svm is not good for hog feature (i have a feature vector with 40.000 lenght) i tried K-means and when i print this. print k_means.labels_[::10] i have this result: [2 2 2 0 0 0 0 2]. I do not what it means. – postgres Jan 8 '13 at 14:44

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