Exemple #1
0
def train_svm(test=False, C=0.01, gamma=.1, grid=False):
    which = "piecewise"

    data_train = load_data(which=which)
    data_train = add_kraehenbuehl_features(data_train, which="train_30px")
    data_train = add_kraehenbuehl_features(data_train, which="train")
    data_train_novoid = discard_void(data_train, 21)
    if grid and test:
        raise ValueError("Don't you dare grid-search on the test-set!")

    svm = LinearSVC(C=C, class_weight='auto', multi_class='crammer_singer',
                    dual=False)
    #svm = LogisticRegression(C=C, class_weight='auto')
    data_val = load_data('val', which=which)
    data_val = add_kraehenbuehl_features(data_val, which="train_30px")
    data_val = add_kraehenbuehl_features(data_val, which="train")
    data_val_novoid = discard_void(data_val, 21)

    if grid:
        n_samples_train = len(np.hstack(data_train_novoid.Y))
        n_samples_val = len(np.hstack(data_val_novoid.Y))
        cv = SimpleSplitCV(n_samples_train, n_samples_val)
        data_trainval = concatenate_datasets(data_train_novoid,
                                             data_val_novoid)

        from sklearn.grid_search import GridSearchCV
        #from sklearn.grid_search import RandomizedSearchCV
        #from scipy.stats import expon, gamma
        #param_grid = {'C': 10. ** np.arange(1, 4), 'gamma': 10. **
                      #np.arange(-3, 1)}
        param_grid = {'C': 10. ** np.arange(-6, 2)}
        scorer = PixelwiseScorer(data=data_val)
        grid = GridSearchCV(svm, param_grid=param_grid, verbose=10, n_jobs=-1,
                            cv=cv, scoring=scorer, refit=False)
        grid.fit(np.vstack(data_trainval.X),
                 np.hstack(data_trainval.Y))
        print(grid.best_params_)
        print(grid.best_score_)
    else:
        print(svm)
        if test:
            data_train_novoid = concatenate_datasets(data_train_novoid,
                                                     data_val_novoid)

        print(np.vstack(data_train_novoid.X).shape)
        svm.fit(np.vstack(data_train_novoid.X), np.hstack(data_train_novoid.Y))
        if test:
            data_test = load_data("test", which=which)
        else:
            data_test = load_data("val", which=which)
        data_test = add_kraehenbuehl_features(data_test, which="train_30px")
        data_test = add_kraehenbuehl_features(data_test, which="train")
        scorer = PixelwiseScorer(data=data_test)
        scorer(svm, None, None)

    return svm
Exemple #2
0
def main(C=1, test=False):
    # load training data
    #independent = True
    independent = False
    data_train = load_data(which="piecewise")
    data_train = add_edges(data_train,
                           independent=independent,
                           fully_connected=True)
    data_train = add_kraehenbuehl_features(data_train, which="train_30px")
    data_train = add_kraehenbuehl_features(data_train, which="train")

    #data_train = load_data_global_probs()

    if not independent:
        data_train = add_edge_features(data_train)

    data_train = discard_void(data_train, 21)

    if test:
        data_val = load_data("val", which="piecewise_train")
        data_val = add_edges(data_val, independent=independent)
        data_val = add_kraehenbuehl_features(data_val, which="train_30px")
        data_val = add_kraehenbuehl_features(data_val, which="train")
        data_val = add_edge_features(data_val)
        data_val = discard_void(data_val, 21)
        data_train = concatenate_datasets(data_train, data_val)

        #X_.extend(data_val.X)
        #Y_.extend(data_val.Y)

    n_states = 21
    print("number of samples: %s" % len(data_train.X))
    class_weights = 1. / np.bincount(np.hstack(data_train.Y))
    #class_weights[21] = 0
    class_weights *= 21. / np.sum(class_weights)
    #class_weights = np.ones(n_states)
    print(class_weights)
    #model = crfs.GraphCRF(n_states=n_states,
    #n_features=data_train.X[0][0].shape[1],
    #inference_method='qpbo', class_weight=class_weights)
    model = crfs.EdgeFeatureGraphCRF(n_states=n_states,
                                     n_features=data_train.X[0][0].shape[1],
                                     inference_method='qpbo',
                                     class_weight=class_weights,
                                     n_edge_features=3,
                                     symmetric_edge_features=[0, 1],
                                     antisymmetric_edge_features=[2])
    experiment_name = "fully_connected_%f" % C
    #warm_start = True
    warm_start = False
    ssvm = learners.OneSlackSSVM(model,
                                 verbose=2,
                                 C=C,
                                 max_iter=100000,
                                 n_jobs=-1,
                                 tol=0.0001,
                                 show_loss_every=50,
                                 inference_cache=50,
                                 cache_tol='auto',
                                 logger=SaveLogger(experiment_name + ".pickle",
                                                   save_every=100),
                                 inactive_threshold=1e-5,
                                 break_on_bad=False,
                                 inactive_window=50,
                                 switch_to_ad3=False)
    #ssvm = learners.SubgradientSSVM(
    #model, verbose=3, C=C, max_iter=10000, n_jobs=-1, show_loss_every=10,
    #logger=SaveLogger(experiment_name + ".pickle", save_every=10),
    #momentum=0, learning_rate=0.001, decay_exponent=1)

    if warm_start:
        ssvm = SaveLogger(experiment_name + ".pickle").load()
        ssvm.logger = SaveLogger(file_name=experiment_name + "_refit.pickle",
                                 save_every=10)
        ssvm.learning_rate = 0.000001
        #ssvm.model.inference_method = 'ad3'
        #ssvm.n_jobs = 1

    ssvm.fit(data_train.X, data_train.Y, warm_start=warm_start)
    print("fit finished!")
    return
Exemple #3
0
def main(C=1, test=False):
    # load training data
    #independent = True
    independent = False
    data_train = load_data(which="piecewise")
    data_train = add_edges(data_train, independent=independent,
                           fully_connected=True)
    data_train = add_kraehenbuehl_features(data_train, which="train_30px")
    data_train = add_kraehenbuehl_features(data_train, which="train")

    #data_train = load_data_global_probs()

    if not independent:
        data_train = add_edge_features(data_train)

    data_train = discard_void(data_train, 21)

    if test:
        data_val = load_data("val", which="piecewise_train")
        data_val = add_edges(data_val, independent=independent)
        data_val = add_kraehenbuehl_features(data_val, which="train_30px")
        data_val = add_kraehenbuehl_features(data_val, which="train")
        data_val = add_edge_features(data_val)
        data_val = discard_void(data_val, 21)
        data_train = concatenate_datasets(data_train, data_val)

        #X_.extend(data_val.X)
        #Y_.extend(data_val.Y)

    n_states = 21
    print("number of samples: %s" % len(data_train.X))
    class_weights = 1. / np.bincount(np.hstack(data_train.Y))
    #class_weights[21] = 0
    class_weights *= 21. / np.sum(class_weights)
    #class_weights = np.ones(n_states)
    print(class_weights)
    #model = crfs.GraphCRF(n_states=n_states,
                          #n_features=data_train.X[0][0].shape[1],
                          #inference_method='qpbo', class_weight=class_weights)
    model = crfs.EdgeFeatureGraphCRF(n_states=n_states,
                                     n_features=data_train.X[0][0].shape[1],
                                     inference_method='qpbo',
                                     class_weight=class_weights,
                                     n_edge_features=3,
                                     symmetric_edge_features=[0, 1],
                                     antisymmetric_edge_features=[2])
    experiment_name = "fully_connected_%f" % C
    #warm_start = True
    warm_start = False
    ssvm = learners.OneSlackSSVM(
        model, verbose=2, C=C, max_iter=100000, n_jobs=-1,
        tol=0.0001, show_loss_every=50, inference_cache=50, cache_tol='auto',
        logger=SaveLogger(experiment_name + ".pickle", save_every=100),
        inactive_threshold=1e-5, break_on_bad=False, inactive_window=50,
        switch_to_ad3=False)
    #ssvm = learners.SubgradientSSVM(
        #model, verbose=3, C=C, max_iter=10000, n_jobs=-1, show_loss_every=10,
        #logger=SaveLogger(experiment_name + ".pickle", save_every=10),
        #momentum=0, learning_rate=0.001, decay_exponent=1)

    if warm_start:
        ssvm = SaveLogger(experiment_name + ".pickle").load()
        ssvm.logger = SaveLogger(
            file_name=experiment_name + "_refit.pickle",
            save_every=10)
        ssvm.learning_rate = 0.000001
        #ssvm.model.inference_method = 'ad3'
        #ssvm.n_jobs = 1

    ssvm.fit(data_train.X, data_train.Y, warm_start=warm_start)
    print("fit finished!")
    return