Exemple #1
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def plot_new_values(files, activity_labels, remove_gravity=True):
    mvs = []
    stats = []
    i = 0
    for file in files:
        print('reading {}'.format(file))
        samples = read_csv_acc_samples_file(file)
        if remove_gravity:
            filter_gravity(samples)
            samples = samples[new_start:]
            # samples = samples[2500:7500]

        # mv = calculate_magnitude_vector(samples)
        # mvs.append(mv)

        stat = get_statistics_per_window(samples,
                                         mean_to_add=means[activity_labels[i]])
        stats.append(stat)
        i += 1

    # plot_magnitude_vectors(mvs, activity_labels)
    # statistics_ids = ['mean_with_mean', 'avg_max_range']
    # plot_statistics(stats, statistics_ids, activity_labels)
    #
    # statistics_ids = ['mean_with_mean', 'std_dev']
    # plot_statistics(stats, statistics_ids, activity_labels)
    statistics_ids = ['std_dev_with_mean', 'mean_with_mean']
    plot_statistics(stats, statistics_ids, [
        'Standard deviation (+transportation mode mean)',
        'Mean (+transportation mode mean)'
    ], activity_labels, 'c:\\users\\rafael\\desktop\\new-plot.pdf')
Exemple #2
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def show_normal_vs_ui(normal_file_path, ui_file_path):
    samples_static_normal = read_csv_acc_samples_file(normal_file_path)
    samples_static_ui = read_csv_acc_samples_file(ui_file_path)

    # ts_top_threshold = 150
    # samples_static_ui = list(filter(lambda x: x.timestamp < ts_top_threshold, samples_static_ui))
    # samples_static_normal = list(filter(lambda x: x.timestamp < ts_top_threshold, samples_static_normal))

    normalize_time(samples_static_normal)
    normalize_time(samples_static_ui)

    # samples_static_normal = samples_static_normal[10:]
    # samples_static_ui = samples_static_ui[10:]

    normalize_time(samples_static_normal, factor=1.0)
    normalize_time(samples_static_ui, factor=1.0)

    filter_gravity(samples_static_normal)
    filter_gravity(samples_static_ui)

    # normalize_time(samples_static_normal)
    # normalize_time(samples_static_ui)

    plot_activity_data(samples_static_normal, 'Static normal')
    plot_activity_data(samples_static_ui, 'Static UI')
Exemple #3
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def calculate_global_statistics(files, remove_gravity=True):
    for f in files:
        samples = read_csv_acc_samples_file(f)
        if remove_gravity:
            filter_gravity(samples)
            samples = samples[new_start:]

        mv = calculate_magnitude_vector(samples)
        mean_value = np.mean(mv)

        print('For {} mean is {}'.format(f, mean_value))
Exemple #4
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def show_magnitude_vectors_of_activities(files, labels, remove_gravity=True):
    mvs = []
    for file in files:
        print('reading {}'.format(file))
        samples = read_csv_acc_samples_file(file)
        if remove_gravity:
            filter_gravity(samples)
            samples = samples[20:]
            # samples = samples[2500:7500]

        mv = calculate_magnitude_vector(samples)
        mvs.append(mv)

    plot_magnitude_vectors(mvs, labels)
Exemple #5
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def show_magnitude_vector_per_alpha(alpha_values, file_path):
    vectors = []
    samples = read_csv_acc_samples_file(file_path)
    normalize_time(samples)
    timestamps = list(map(lambda x: x.timestamp, samples))
    for alpha in alpha_values:
        samples = read_csv_acc_samples_file(file_path)
        normalize_time(samples)
        filter_gravity(samples, alpha=alpha)
        mv = calculate_magnitude_vector(samples)
        vectors.append(mv)

    plot_magnitude_vectors_per_alpha(vectors,
                                     timestamps,
                                     alpha_values,
                                     single=True)
Exemple #6
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def analyze_three_dimensions(files, activity_labels, remove_gravity):
    statistics = []
    i = 0
    for f in files:
        samples = read_csv_acc_samples_file(f)

        if remove_gravity:
            filter_gravity(samples)
            samples = samples[new_start:]

        normalize_time(samples)
        stats = get_statistics_per_window(
            samples, mean_to_add=means[activity_labels[i]])
        statistics.append(stats)
        i += 1

    attributes_to_plot = ['mean_with_mean', 'std_dev', 'avg_max_range']
    plot_three_dimensions(statistics, activity_labels, attributes_to_plot)
Exemple #7
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def plot_portion_of_data(files, activity_labels, remove_gravity=True):
    samples_list = []
    new_start = 20
    id_window_to_select = 90

    for f in files:
        samples = read_csv_acc_samples_file(f)
        if remove_gravity:
            filter_gravity(samples)
            samples = samples[new_start:]

        samples = list(
            filter(lambda x: x.id_window < id_window_to_select, samples))
        normalize_time(samples)

        samples_list.append(samples)

    plot_accelerations_and_mag_vectors(samples_list, activity_labels)
Exemple #8
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def show_different_filter_configurations(alpha=0.8):
    samples_vehicle_1 = read_csv_acc_samples_file(
        'c:\\users/rafael/desktop/vehicle/focus-guindo/vehicle-samples-2017-09-19-192509.csv'
    )
    samples_power_on = read_csv_acc_samples_file(
        'c:\\users/rafael/desktop/static-power-on.csv')
    # samples_power_off = read_csv_acc_samples_file('c:\\users/rafael/desktop/static-power-off.csv')
    samples_power_on = samples_power_on[new_start:]
    samples_vehicle_1 = samples_vehicle_1[new_start:]
    # samples_power_off = samples_power_off[new_start:]

    filter_gravity(samples_power_on, alpha=alpha)
    filter_gravity(samples_vehicle_1, alpha=alpha)
    # filter_gravity(samples_power_off, alpha=alpha)

    normalize_time(samples_power_on)
    normalize_time(samples_vehicle_1)
    # normalize_time(samples_power_off)

    ts_top_threshold = 150
    samples_power_on = list(
        filter(lambda x: x.timestamp < ts_top_threshold, samples_power_on))
    samples_vehicle_1 = list(
        filter(lambda x: x.timestamp < ts_top_threshold, samples_vehicle_1))
    # samples_power_off = list(filter(lambda x: x.timestamp < ts_top_threshold, samples_power_off))

    # samples_power_on = samples_power_on[:ts_top_threshold]
    # samples_power_off = samples_power_off[:ts_top_threshold]

    # plot_activity_data(samples_power_on, 'Powered on, alpha={}'.format(alpha))
    # plot_activity_data(samples_vehicle_1, 'V1, alpha={}'.format(alpha))
    # plot_activity_data(samples_power_off, 'Powered off, alpha={}'.format(alpha))

    # plot the magnitude vectors
    mv_static_1 = calculate_magnitude_vector(samples_power_on)
    mv_vehicle_1 = calculate_magnitude_vector(samples_vehicle_1)

    vectors = [mv_static_1, mv_vehicle_1]
    activities = ['Static', 'V1']
    vectors = [mv_static_1, mv_vehicle_1]
    activities = ['Static', 'V1']
    plot_magnitude_vectors(vectors, activities)
Exemple #9
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def do_work():
    home = str(Path.home()) + '/'
    desktop = home + 'desktop/'

    samples_vehicle_1 = read_csv_acc_samples_file(
        'c:\\users/rafael/desktop/vehicle/focus-guindo/vehicle-samples-2017-09-19-192509.csv'
    )
    samples_vehicle_2 = read_csv_acc_samples_file(
        'c:\\users/rafael/desktop/vehicle/focus-guindo/vehicle-samples-2017-09-20-081651.csv'
    )
    samples_vehicle_3 = read_csv_acc_samples_file(
        'c:\\users/rafael/desktop/vehicle/focus-guindo/vehicle-samples-2017-09-20-092617.csv'
    )

    samples_vehicle_4 = read_csv_acc_samples_file(
        'c:\\users/rafael/desktop/vehicle/focus-arena/vehicle-samples-2017-09-20-131224.csv'
    )
    samples_vehicle_5 = read_csv_acc_samples_file(
        'c:\\users/rafael/desktop/vehicle/focus-arena/vehicle-samples-2017-09-20-140314.csv'
    )

    samples_static_1 = read_csv_acc_samples_file(
        'c:\\users/rafael/desktop/static/static-samples-2017-09-21-183652-ui.csv'
    )

    # filter_gravity_per_window(samples_vehicle_1)
    # filter_gravity_per_window(samples_vehicle_2)
    # filter_gravity_per_window(samples_vehicle_3)
    # filter_gravity_per_window(samples_vehicle_4)
    # filter_gravity_per_window(samples_vehicle_5)
    # filter_gravity_per_window(samples_static_1)

    filter_gravity(samples_vehicle_1)
    filter_gravity(samples_vehicle_2)
    filter_gravity(samples_vehicle_3)
    filter_gravity(samples_vehicle_4)
    filter_gravity(samples_vehicle_5)
    filter_gravity(samples_static_1)

    samples_vehicle_1 = samples_vehicle_1[new_start:]
    samples_vehicle_2 = samples_vehicle_2[new_start:]
    samples_vehicle_3 = samples_vehicle_3[new_start:]
    samples_vehicle_4 = samples_vehicle_4[new_start:]
    samples_vehicle_5 = samples_vehicle_5[new_start:]
    samples_static_1 = samples_static_1[new_start:]

    normalize_time(samples_vehicle_1)
    normalize_time(samples_vehicle_2)
    normalize_time(samples_vehicle_3)
    normalize_time(samples_vehicle_4)
    normalize_time(samples_vehicle_5)
    normalize_time(samples_static_1)

    plot_activity_data(samples_vehicle_1, 'Vehicle one')
    plot_activity_data(samples_vehicle_2, 'Vehicle two')
    plot_activity_data(samples_vehicle_3, 'Vehicle three')
    plot_activity_data(samples_vehicle_4, 'Vehicle four')
    plot_activity_data(samples_vehicle_5, 'Vehicle five')
    plot_activity_data(samples_static_1, 'Static one')

    # Plot of magnitude vectors
    top_threshold = 500
    static_1_portion = list(
        filter(lambda x: x.timestamp < top_threshold, samples_static_1))
    vehicle_1_portion = list(
        filter(lambda x: x.timestamp < top_threshold, samples_vehicle_1))
    vehicle_2_portion = list(
        filter(lambda x: x.timestamp < top_threshold, samples_vehicle_2))
    vehicle_3_portion = list(
        filter(lambda x: x.timestamp < top_threshold, samples_vehicle_3))
    vehicle_4_portion = list(
        filter(lambda x: x.timestamp < top_threshold, samples_vehicle_4))
    vehicle_5_portion = list(
        filter(lambda x: x.timestamp < top_threshold, samples_vehicle_5))

    mv_static_1 = calculate_magnitude_vector(static_1_portion)
    mv_vehicle_1 = calculate_magnitude_vector(vehicle_1_portion)
    mv_vehicle_2 = calculate_magnitude_vector(vehicle_2_portion)
    mv_vehicle_3 = calculate_magnitude_vector(vehicle_3_portion)
    mv_vehicle_4 = calculate_magnitude_vector(vehicle_4_portion)
    mv_vehicle_5 = calculate_magnitude_vector(vehicle_5_portion)
    vectors = [
        mv_static_1, mv_vehicle_1, mv_vehicle_2, mv_vehicle_3, mv_vehicle_4,
        mv_vehicle_5
    ]
    activities = ['Static', 'V1', 'V2', 'V3', 'V4', 'V5']
    vectors = [mv_static_1, mv_vehicle_5]
    activities = ['Static', 'V5']
    # plot_magnitude_vectors(vectors, activities)

    # Plot of statistics
    statistics_static_1 = get_statistics_per_window(samples_static_1)
    statistics_vehicle_1 = get_statistics_per_window(samples_vehicle_1)
    statistics_vehicle_2 = get_statistics_per_window(samples_vehicle_2)
    statistics_vehicle_3 = get_statistics_per_window(samples_vehicle_3)
    statistics_vehicle_4 = get_statistics_per_window(samples_vehicle_4)
    statistics_vehicle_5 = get_statistics_per_window(samples_vehicle_5)

    statistics_ids = ['std_dev', 'mean']
    plot_statistics(statistics_static_1, statistics_vehicle_1,
                    statistics_vehicle_2, statistics_vehicle_3, statistics_ids,
                    ['Static', 'Vehicle 1', 'Vehicle 2', 'Vehicle 3'])
    # plot_statistics(statistics_static, statistics_walking, statistics_running, statistics_vehicle, statistics_ids)
    plot_statistics(statistics_static_1, [], [], statistics_vehicle_1,
                    statistics_ids,
                    ['Static', 'Vehicle 1', 'Vehicle 2', 'Vehicle 3'])
    plt.show()