コード例 #1
0
def evaluate(category, clf, datamanager, data=(None, None)):
    """Run evaluation of a classifier, for one category.

    If data isn't set explicitly, the test set is
    used by default.
    """
    log_file = os.path.join(datamanager.PATHS["LOGS"], "evaluation",
                            class_name(clf), category)
    log_file = os.path.join(log_file, str(datetime.now()) + ".log")

    vcd = VisualConceptDetection(None, datamanager, log_file=log_file)
    clf = vcd.load_object("Classifier", category, clf)
    vcd.classifier = clf
    if (data[0] is None) or (data[1] is None):
        return vcd.evaluate_test_set(category)
    else:
        return vcd.evaluate(X_test=data[0], y_test=data[1])
コード例 #2
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 def setUp(self):
     self.datamanager = MyTestDataManager()
     clf = AdaBoostClassifier(n_estimators=14)
     clf.base_estimator.max_depth = 10
     self.vcd = VisualConceptDetection(clf, self.datamanager)
コード例 #3
0
import sys
from sklearn.ensemble import RandomForestClassifier, AdaBoostClassifier
from sklearn.svm import LinearSVC, SVC
from vcd import VisualConceptDetection
import os
import time
from util import svm
from datamanagers.CaltechManager import CaltechManager
import numpy as np
import pylab as pl

from runGridSearch import GridSearch

if __name__ == "__main__":
    category = "airplanes"
    total = time.time()

    clf = RandomForestClassifier(n_estimators=2000)

    # clf = AdaBoostClassifier(n_estimators = 2000)
    # clf.base_estimator.max_depth = 4

    # clf = LinearSVC(C=100)
    # clf = SVC(C=10)

    dm = CaltechManager()
    vcd = VisualConceptDetection(classifier=clf, datamanager=dm)

    vcd.run(category)
    print "Total execution time: %f minutes" % ((time.time() - total) / 60.0)
コード例 #4
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if __name__ == "__main__":
    # ada = AdaBoostClassifier()
    # ada.n_estimators = 50
    # ada.base_estimator.max_depth = 1

    random_forest = RandomForestClassifier(n_estimators=100)

    category = "trilobite"
    dataset = "all"
    datamanager = CaltechManager()
    datamanager.PATHS["RESULTS"] = os.path.join(
        datamanager.PATHS["BASE"], "results_trilobite_rf_testing")

    # vcd = VisualConceptDetection(ada, datamanager)
    vcd = VisualConceptDetection(random_forest, datamanager)

    clf = vcd.load_object("Classifier", category)
    feature_importances = clf.feature_importances_

    sample_matrix = vcd.datamanager.build_sample_matrix(dataset, category)
    class_vector = vcd.datamanager.build_class_vector(dataset, category)
    pred = clf.predict_proba(sample_matrix)

    vis = EnsembleVisualization(datamanager)
    del clf
    image_titles = [
        vis.get_image_title(prediction, real)
        for prediction, real in izip(pred, class_vector)
    ]
    del class_vector
コード例 #5
0
def get_svm_importances(coef):
    """Normalize the SVM weights."""
    factor = 1.0 / np.linalg.norm(coef)
    return (coef * factor).ravel()


if __name__ == "__main__":
    svm = LinearSVC(C=0.1)

    category = "Faces"
    dataset = "all"
    datamanager = CaltechManager()
    datamanager.PATHS["RESULTS"] = os.path.join(
        datamanager.PATHS["BASE"], "results_Faces_LinearSVC_normalized")
    vcd = VisualConceptDetection(svm, datamanager)

    clf = vcd.load_object("Classifier", category)
    importances = get_svm_importances(clf.coef_)

    sample_matrix = vcd.datamanager.build_sample_matrix(dataset, category)
    class_vector = vcd.datamanager.build_class_vector(dataset, category)
    pred = clf.decision_function(sample_matrix)

    del clf
    image_titles = [
        get_image_title(prediction, real)
        for prediction, real in izip(pred, class_vector)
    ]
    del class_vector
    del sample_matrix