コード例 #1
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    def test_generate_kpis(self):        
        self.assertIn('recording.bag', os.listdir(ROOT_PATH),'recording.bag cannot be found')

        sim_eval = Evaluation(ROSBAG, RESULTS_DIR)        
        sim_eval.compute_kpis()

        self.assertTrue(type(sim_eval.get_kpis()) == dict, 'KPIs structure is not a dictionary')
コード例 #2
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    def test_generate_kpis(self):        
        runner = SimulationRunner(PARAMS, TASK, RESULTS_DIR, True)
        runner.run(PARAMS)

        self.assertIn('recording.bag', os.listdir(runner.current_sim_results_dir),'recording.bag cannot be found')

        sim_eval = Evaluation(runner.recording_filename, runner.current_sim_results_dir)        
        sim_eval.compute_kpis()

        self.assertTrue(type(sim_eval.get_kpis()) == dict, 'KPIs structure is not a dictionary')
コード例 #3
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def gen_evaluation(output_dir, bag_filename, task_filename):
    """Create a new evaluation object for a ROS bag."""
    if not os.path.isdir(output_dir):
        os.makedirs(output_dir)
    sim_eval = Evaluation(bag_filename, output_dir)
    sim_eval.save_evaluation()

    if os.path.isfile(task_filename):
        shutil.copy(task_filename, output_dir)

    del sim_eval
コード例 #4
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def gen_evaluations(bags, output_dir):
    """Generate evaluation instances for each ROS bag file in the bags array."""
    sim_evals = list()
    for bag in bags:
        print '\tOPENING BAG: ', bag
        sim_evals.append(Evaluation(bag, output_dir))
    return sim_evals
コード例 #5
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    def test_store_kpis(self):
        self.assertIn('recording.bag', os.listdir(ROOT_PATH),'recording.bag cannot be found')

        sim_eval = Evaluation(ROSBAG, RESULTS_DIR)        
        sim_eval.compute_kpis()
        sim_eval.save_kpis()

        self.assertIn('computed_kpis.yaml', os.listdir(RESULTS_DIR), 'KPIs were not stored in file computed_kpis.yaml')
        self.assertIn('kpi_labels.yaml', os.listdir(RESULTS_DIR), 'KPIs labels were not stored in file kpis_labels.yaml')
コード例 #6
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    def test_store_kpis(self):
        runner = SimulationRunner(PARAMS, TASK, RESULTS_DIR, True)
        runner.run(PARAMS)

        self.assertIn('recording.bag', os.listdir(runner.current_sim_results_dir),'recording.bag cannot be found')

        sim_eval = Evaluation(runner.recording_filename, runner.current_sim_results_dir)        
        sim_eval.compute_kpis()
        sim_eval.save_kpis()

        self.assertIn('computed_kpis.yaml', os.listdir(runner.current_sim_results_dir), 'KPIs were not stored in file computed_kpis.yaml')
        self.assertIn('kpi_labels.yaml', os.listdir(runner.current_sim_results_dir), 'KPIs labels were not stored in file kpis_labels.yaml')
コード例 #7
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    def test_store_images(self):
        self.assertIn('recording.bag', os.listdir(ROOT_PATH),
                      'recording.bag cannot be found')

        sim_eval = Evaluation(ROSBAG, RESULTS_DIR)
        sim_eval.compute_kpis()
        sim_eval.save_evaluation()

        pdf_files = list()
        for f in os.listdir(RESULTS_DIR):
            if '.pdf' in f:
                pdf_files.append(f)
コード例 #8
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    def test_store_images(self):
        runner = SimulationRunner(PARAMS, TASK, RESULTS_DIR, True)
        runner.run(PARAMS)

        self.assertIn('recording.bag', os.listdir(runner.current_sim_results_dir),'recording.bag cannot be found')

        sim_eval = Evaluation(runner.recording_filename, runner.current_sim_results_dir)        
        sim_eval.compute_kpis()
        sim_eval.save_evaluation()

        pdf_files = list()
        for f in os.listdir(runner.current_sim_results_dir):
            if '.pdf' in f:
                pdf_files.append(f)

        self.assertGreater(len(pdf_files), 0, 'PDF files were not generated')
コード例 #9
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    task = opt_config['task']
    results_dir = opt_config['output_dir']
    record_all = False

    params = parse_input(args, opt_config['input_map'])

    if 'store_all_results' in opt_config:
        record_all = opt_config['store_all_results']

    try:
        runner = SimulationRunner(params, task, results_dir, record_all)

        runner.run(params)

        sim_eval = Evaluation(runner.recording_filename,
                              runner.current_sim_results_dir)
        output_path = deepcopy(runner.current_sim_results_dir)
        sim_eval.compute_kpis()

        if 'store_kpis_only' in opt_config:
            if opt_config['store_kpis_only']:
                sim_eval.save_kpis()
            else:
                sim_eval.save_evaluation()
        else:
            sim_eval.save_kpis()

        cost = 0.0
        for tag in opt_config['cost_fcn']:
            cost += sim_eval.get_kpi(tag) * opt_config['cost_fcn'][tag]
コード例 #10
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def plot_comparison_pose_error(output_dir, bags, labels, title, filename):
    """Generate comparative plots for the ROS bags in the bags array regarding the position and heading errors."""
    assert len(labels) == len(bags), 'Number of labels and bags is different'

    fig = plt.figure(figsize=(PLOT_CONFIGS['plot']['figsize'][0],
                              PLOT_CONFIGS['plot']['figsize'][1]))
    ax = fig.gca()

    min_t = None
    max_t = None

    min_pos = 0.0
    max_pos = 0.0

    for i in range(len(bags)):
        sim_eval = Evaluation(bags[i], output_dir)

        t = sim_eval.get_error_time()

        if min_t is None:
            min_t = np.min(t)
            max_t = np.max(t)
        else:
            min_t = np.min([np.min(t), min_t])
            max_t = np.min([np.max(t), max_t])

        error = sim_eval.get_error_from_data('position')

        min_pos = np.min([np.min(error), min_pos])
        max_pos = np.max([np.max(error), max_pos])

        ax.plot(sim_eval.get_error_time(),
                sim_eval.get_error_from_data('position'),
                linewidth=PLOT_CONFIGS['plot']['linewidth'],
                label=labels[i],
                zorder=len(bags) - i)

        fig.canvas.draw()
        del sim_eval

    sim_eval = Evaluation(bags[0], output_dir)
    plot_disturbance_areas(fig, ax, sim_eval, min_pos, max_pos)
    del sim_eval

    ax.set_xlabel('Time [s]', fontsize=PLOT_CONFIGS['plot']['label_fontsize'])
    ax.set_ylabel('Position error [m]',
                  fontsize=PLOT_CONFIGS['plot']['label_fontsize'])
    ax.legend(fancybox=True,
              framealpha=0.5,
              loc='upper left',
              fontsize=PLOT_CONFIGS['plot']['legend']['fontsize'])
    ax.grid(True)
    ax.tick_params(axis='both',
                   labelsize=PLOT_CONFIGS['plot']['tick_fontsize'])

    ax.set_xlim(min_t, max_t)
    ax.set_ylim(min_pos, max_pos)

    plt.tight_layout()
    plt.savefig(os.path.join(output_dir, 'position_' + filename))
    plt.close(fig)

    # Plotting heading error

    fig = plt.figure(figsize=(PLOT_CONFIGS['plot']['figsize'][0],
                              PLOT_CONFIGS['plot']['figsize'][1]))
    ax = fig.gca()

    min_t = None
    max_t = None

    min_yaw = 0.0
    max_yaw = 0.0

    for i in range(len(bags)):
        sim_eval = Evaluation(bags[i], output_dir)

        t = sim_eval.get_error_time()

        if min_t is None:
            min_t = np.min(t)
            max_t = np.max(t)
        else:
            min_t = np.min([np.min(t), min_t])
            max_t = np.min([np.max(t), max_t])

        error = sim_eval.get_error_set_data('yaw')

        min_yaw = np.min([np.min(error), min_yaw])
        max_yaw = np.max([np.max(error), max_yaw])

        ax.plot(sim_eval.get_error_time(),
                sim_eval.get_error_set_data('yaw'),
                linewidth=PLOT_CONFIGS['plot']['linewidth'],
                label=labels[i],
                zorder=len(bags) - i)
        fig.canvas.draw()
        del sim_eval

    sim_eval = Evaluation(bags[0], output_dir)
    plot_disturbance_areas(fig, ax, sim_eval, min_yaw, max_yaw)
    del sim_eval

    ax.set_xlim(min_t, max_t)
    ax.set_ylim(min_pos, max_pos)

    ax.set_xlabel('Time [s]', fontsize=PLOT_CONFIGS['plot']['label_fontsize'])
    ax.set_ylabel('Heading error [rad]',
                  fontsize=PLOT_CONFIGS['plot']['label_fontsize'])
    ax.legend(fancybox=True,
              framealpha=0.5,
              loc='upper left',
              fontsize=PLOT_CONFIGS['plot']['legend']['fontsize'])
    ax.grid(True)
    ax.tick_params(axis='both',
                   labelsize=PLOT_CONFIGS['plot']['tick_fontsize'])

    ax.set_xlim(min_t, max_t)
    ax.set_ylim(min_yaw, max_yaw)

    plt.tight_layout()
    plt.savefig(os.path.join(output_dir, 'heading_' + filename))
    plt.close(fig)
コード例 #11
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def plot_paths(output_dir, bags, labels, title, filename):
    """Generate path plots for the ROS bags provided"""
    assert len(labels) == len(bags), 'Number of labels and bags is different'

    fig = plt.figure(figsize=(PLOT_CONFIGS['paths']['figsize'][0],
                              PLOT_CONFIGS['paths']['figsize'][1]))
    ax = fig.gca(projection='3d')

    target_path = False

    min_z = None
    max_z = None

    for i in range(len(bags)):
        sim_eval = Evaluation(bags[i], output_dir)

        if not target_path:
            traj = sim_eval.get_trajectory_coord('desired')
            ax.plot(traj[0],
                    traj[1],
                    traj[2],
                    'g--',
                    label='Reference path',
                    linewidth=PLOT_CONFIGS['paths']['linewidth'])
            fig.canvas.draw()
            target_path = True

        traj = sim_eval.get_trajectory_coord('actual')
        ax.plot(traj[0],
                traj[1],
                traj[2],
                label=labels[i],
                linewidth=PLOT_CONFIGS['paths']['linewidth'])

        if min_z is None:
            min_z = np.min(traj[2])
            max_z = np.max(traj[2])
        else:
            min_z = min(np.min(traj[2]), min_z)
            max_z = max(np.max(traj[2]), max_z)
        fig.canvas.draw()

    ax.set_xlabel('X [m]', fontsize=PLOT_CONFIGS['paths']['label_fontsize'])
    ax.set_ylabel('Y [m]', fontsize=PLOT_CONFIGS['paths']['label_fontsize'])
    ax.set_zlabel('Z [m]', fontsize=PLOT_CONFIGS['paths']['label_fontsize'])

    ax.tick_params(axis='x',
                   labelsize=PLOT_CONFIGS['paths']['tick_fontsize'],
                   pad=15)
    ax.tick_params(axis='y',
                   labelsize=PLOT_CONFIGS['paths']['tick_fontsize'],
                   pad=15)
    ax.tick_params(axis='z',
                   labelsize=PLOT_CONFIGS['paths']['tick_fontsize'],
                   pad=15)

    ax.xaxis.labelpad = 30
    ax.yaxis.labelpad = 30
    ax.zaxis.labelpad = 30

    ax.set_zlim(min_z - 1, max_z + 1)

    ax.set_title(title, fontsize=PLOT_CONFIGS['paths']['title_fontsize'])

    ax.legend(loc=PLOT_CONFIGS['paths']['legend']['loc'],
              fancybox=True,
              framealpha=0.8,
              fontsize=PLOT_CONFIGS['paths']['legend']['fontsize'])
    ax.grid(True)

    fig.tight_layout()
    fig.savefig(os.path.join(output_dir, filename))
    plt.close(fig)
コード例 #12
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        logger.info('Processing directory = ' + d)
        logger.info('Directory label = ' + label)
        tasks[d] = list()
        kpis[d] = list()
        tasks_cost_fcn[d] = list()
        for item in sorted(os.listdir(d)):
            p = os.path.join(d, item)
            if os.path.isdir(p):
                if 'recording.bag' not in os.listdir(p):
                    continue
                cur_kpi = None
                try:
                    if 'computed_kpis.yaml' not in os.listdir(p):
                        logger.info('KPIs are not yet available')
                        logger.info('Computing KPIs')
                        sim_eval = Evaluation(os.path.join(p, 'recording.bag'),
                                              p)
                        sim_eval.save_kpis()
                        del sim_eval
                    for f in os.listdir(p):
                        if 'computed_kpis' in f:
                            kpi_filename = os.path.join(p, f)

                            with open(kpi_filename, 'r') as k_file:
                                cur_kpi = yaml.load(k_file)

                            if cost_fcn is not None:
                                tasks_cost_fcn[d].append(0.0)
                                for tag in cost_fcn:
                                    tasks_cost_fcn[d][
                                        -1] += cost_fcn[tag] * cur_kpi[tag]
コード例 #13
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#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.

from __future__ import division
import argparse
import numpy as np
import os
import yaml
import sys
from bag_evaluation import Evaluation

import roslib
import rospy
roslib.load_manifest('uuv_control_evaluation')

if __name__ == "__main__":
    parser = argparse.ArgumentParser(description="Analyze bag file")
    parser.add_argument("bagfile", type=str)
    parser.add_argument("output_dir", type=str)

    args = parser.parse_args(rospy.myargv()[1:])

    sim_eval = Evaluation(args.bagfile, args.output_dir)

    sim_eval.compute_kpis()
    sim_eval.save_evaluation()
コード例 #14
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                    tag, value = item.split('=')
                    parsed_params[tag] = float(value[1:-1])

                params = parse_input(parsed_params, opt_config['input_map'])

                task = os.path.join(args.input_dir, opt_config['task'])
                print idx, sub_result_folder

                runner = SimulationRunner(params,
                                          task,
                                          sub_result_folder,
                                          True,
                                          add_folder_timestamp=False)
                runner.run(params)

                sim_eval = Evaluation(runner.recording_filename,
                                      runner.current_sim_results_dir)
                sim_eval.compute_kpis()
                sim_eval.save_evaluation()

                if desired is None:
                    desired = sim_eval.get_trajectory_coord('desired')

                traj.append(sim_eval.get_trajectory_coord('actual'))

                error_t.append(sim_eval._error_set.get_time())
                error_vec.append(
                    KPI.get_error(sim_eval._error_set.get_data('position')))
                error_yaw_vec.append(sim_eval._error_set.get_data('yaw'))

                if t_cur is None:
                    t_cur, vec_cur = sim_eval._bag.get_current_vel()