本次的任务是进行人脸识别。git
对于本次课程中出现的两个概念:SVM和核函数。算法
数据挖掘的本质是进行数据分类、提取、分析。那么本次的SVM,其本质也是一种对类别的划分。在以前的类别中,能够在二维平面找到一个相应的直线进行分割,实现了类划分。当二维空间上,没法找到这样一个线性维度进行分割的时候,怎么办呢,SVM的做用就是,将这些二维的类,投影到高维空间,以便找到这样一个线性的平面,进行分割。在投影的过程当中,內积相乘,随着维度增高,计算量不可控。所以,用核函数,在算法上,下降其时间。dom
具体的数学描述,请看下面两个连接:函数
http://blog.csdn.net/wtq1993/article/details/51176097fetch
https://www.zhihu.com/question/24627666this
下面贴出网上代码(代码不难,背后的数学原理和算法设计,笔者认为才是重点):lua
print(__doc__) import numpy as np import matplotlib.pyplot as plt from sklearn import linear_model, decomposition, datasets from sklearn.pipeline import Pipeline from sklearn.grid_search import GridSearchCV logistic = linear_model.LogisticRegression() pca = decomposition.PCA() pipe = Pipeline(steps=[('pca', pca), ('logistic', logistic)]) digits = datasets.load_digits() X_digits = digits.data y_digits = digits.target ############################################################################### # Plot the PCA spectrum pca.fit(X_digits) plt.figure(1, figsize=(4, 3)) plt.clf() plt.axes([.2, .2, .7, .7]) plt.plot(pca.explained_variance_, linewidth=2) plt.axis('tight') plt.xlabel('n_components') plt.ylabel('explained_variance_') ############################################################################### # Prediction n_components = [10, 20, 25, 30, 35, 40, 50, 64]#[i for i in range(1,65)]# Cs = np.logspace(-4, 4, 3) estimator = GridSearchCV(pipe, dict(pca__n_components=n_components, logistic__C=Cs)) estimator.fit(X_digits, y_digits) plt.axvline(estimator.best_estimator_.named_steps['pca'].n_components, linestyle=':', label='n_components chosen') plt.legend(prop=dict(size=12)) plt.show()
其结果显示为:spa
不一样特征选取数目的方差比率大小, 比率大小是按照从大到小的顺序排列.net
代码二:设计
from __future__ import print_function from time import time import logging import matplotlib.pyplot as plt from sklearn.cross_validation import train_test_split from sklearn.datasets import fetch_lfw_people from sklearn.grid_search import GridSearchCV from sklearn.metrics import classification_report from sklearn.metrics import confusion_matrix from sklearn.decomposition import RandomizedPCA from sklearn.svm import SVC print(__doc__) # Display progress logs on stdout logging.basicConfig(level=logging.INFO, format='%(asctime)s %(message)s') ############################################################################### # Download the data, if not already on disk and load it as numpy arrays lfw_people = fetch_lfw_people(min_faces_per_person=70, resize=0.4) # introspect the images arrays to find the shapes (for plotting) n_samples, h, w = lfw_people.images.shape # for machine learning we use the 2 data directly (as relative pixel # positions info is ignored by this model) X = lfw_people.data n_features = X.shape[1] # the label to predict is the id of the person y = lfw_people.target target_names = lfw_people.target_names n_classes = target_names.shape[0] print("Total dataset size:") print("n_samples: %d" % n_samples) print("n_features: %d" % n_features) print("n_classes: %d" % n_classes) ############################################################################### # Split into a training set and a test set using a stratified k fold # split into a training and testing set X_train, X_test, y_train, y_test = train_test_split( X, y, test_size=0.25, random_state=42) ############################################################################### # Compute a PCA (eigenfaces) on the face dataset (treated as unlabeled # dataset): unsupervised feature extraction / dimensionality reduction n_components = 80 print("Extracting the top %d eigenfaces from %d faces" % (n_components, X_train.shape[0])) t0 = time() pca = RandomizedPCA(n_components=n_components, whiten=True).fit(X_train) print("done in %0.3fs" % (time() - t0)) eigenfaces = pca.components_.reshape((n_components, h, w)) print("Projecting the input data on the eigenfaces orthonormal basis") t0 = time() X_train_pca = pca.transform(X_train) X_test_pca = pca.transform(X_test) print("done in %0.3fs" % (time() - t0)) ############################################################################### # Train a SVM classification model print("Fitting the classifier to the training set") t0 = time() param_grid = {'C': [1,10, 100, 500, 1e3, 5e3, 1e4, 5e4, 1e5], 'gamma': [0.0001, 0.0005, 0.001, 0.005, 0.01, 0.1], } clf = GridSearchCV(SVC(kernel='rbf', class_weight='balanced'), param_grid) clf = clf.fit(X_train_pca, y_train) print("done in %0.3fs" % (time() - t0)) print("Best estimator found by grid search:") print(clf.best_estimator_) print(clf.best_estimator_.n_support_) ############################################################################### # Quantitative evaluation of the model quality on the test set print("Predicting people's names on the test set") t0 = time() y_pred = clf.predict(X_test_pca) print("done in %0.3fs" % (time() - t0)) print(classification_report(y_test, y_pred, target_names=target_names)) print(confusion_matrix(y_test, y_pred, labels=range(n_classes))) ############################################################################### # Qualitative evaluation of the predictions using matplotlib def plot_gallery(images, titles, h, w, n_row=3, n_col=4): """Helper function to plot a gallery of portraits""" plt.figure(figsize=(1.8 * n_col, 2.4 * n_row)) plt.subplots_adjust(bottom=0, left=.01, right=.99, top=.90, hspace=.35) for i in range(n_row * n_col): plt.subplot(n_row, n_col, i + 1) # Show the feature face plt.imshow(images[i].reshape((h, w)), cmap=plt.cm.gray) plt.title(titles[i], size=12) plt.xticks(()) plt.yticks(()) # plot the result of the prediction on a portion of the test set def title(y_pred, y_test, target_names, i): pred_name = target_names[y_pred[i]].rsplit(' ', 1)[-1] true_name = target_names[y_test[i]].rsplit(' ', 1)[-1] return 'predicted: %s\ntrue: %s' % (pred_name, true_name) prediction_titles = [title(y_pred, y_test, target_names, i) for i in range(y_pred.shape[0])] plot_gallery(X_test, prediction_titles, h, w) # plot the gallery of the most significative eigenfaces eigenface_titles = ["eigenface %d" % i for i in range(eigenfaces.shape[0])] plot_gallery(eigenfaces, eigenface_titles, h, w) plt.show()
其结果显示为:
分类预测表,时间等。
来源:http://blog.csdn.net/cwlseu/article/details/52356665
备注:最近事情较多,作的比较仓促,代码也只是粗略的浏览了一遍。