Esempio n. 1
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def section_to_geojson(section, tl):
    """
    This is the trickiest part of the visualization.
    The section is basically a collection of points with a line through them.
    So the representation is a feature in which one feature which is the line, and one feature collection which is the set of point features.
    :param section: the section to be converted
    :return: a feature collection which is the geojson version of the section
    """

    ts = esta.TimeSeries.get_time_series(section.user_id)
    entry_it = ts.find_entries(["analysis/recreated_location"],
                               esda.get_time_query_for_trip_like(
                                   "analysis/cleaned_section",
                                   section.get_id()))

    # TODO: Decide whether we want to use Rewrite to use dataframes throughout instead of python arrays.
    # dataframes insert nans. We could use fillna to fill with default values, but if we are not actually
    # using dataframe features here, it is unclear how much that would help.
    feature_array = []
    section_location_entries = [ecwe.Entry(entry) for entry in entry_it]
    if len(section_location_entries) != 0:
        logging.debug("first element in section_location_array = %s" % section_location_entries[0])

        if not ecc.compare_rounded_arrays(section.data.end_loc.coordinates,
                                      section_location_entries[-1].data.loc.coordinates,
                                      digits=4):
            logging.info("section_location_array[-1].data.loc %s != section.data.end_loc %s even after df.ts fix, filling gap" % \
                    (section_location_entries[-1].data.loc, section.data.end_loc))
            assert(False)
            last_loc_doc = ts.get_entry_at_ts("background/filtered_location", "data.ts", section.data.end_ts)
            if last_loc_doc is None:
                logging.warning("can't find entry to patch gap, leaving gap")
            else:
                last_loc_entry = ecwe.Entry(last_loc_doc)
                logging.debug("Adding new entry %s to fill the end point gap between %s and %s"
                   % (last_loc_entry.data.loc, section_location_entries[-1].data.loc,
                        section.data.end_loc))
                section_location_entries.append(last_loc_entry)

    points_line_feature = point_array_to_line(section_location_entries)
    points_line_feature.id = str(section.get_id())
    points_line_feature.properties.update(copy.copy(section.data))
    # Update works on dicts, convert back to a section object to make the modes
    # work properly
    points_line_feature.properties = ecwcs.Cleanedsection(points_line_feature.properties)
    points_line_feature.properties["feature_type"] = "section"
    points_line_feature.properties["sensed_mode"] = str(points_line_feature.properties.sensed_mode)

    _del_non_derializable(points_line_feature.properties, ["start_loc", "end_loc"])

    # feature_array.append(gj.FeatureCollection(points_feature_array))
    feature_array.append(points_line_feature)

    return gj.FeatureCollection(feature_array)
Esempio n. 2
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def get_filtered_section(new_trip_entry, section):
    """
    Save the filtered points associated with this section.
    Do I need a cleaned section as well?
    At first glance, it doesn't seem necessary, since all sections are valid.
    But don't we need a cleaned section that has a trip id == the cleaned trip.
    Otherwise, we need to modify the trip_id of the raw section, which means
    that this is no longer a progressive system that we can recreate.
    So let's create a new entry for the cleaned section that is identical to
    the old section, but pointing to the cleaned trip.
    :param ts: the timeseries for this user
    :param trip: the trip that this section is a part of
    :param section: the section that we are saving
    :return: None
    """
    filtered_section_data = ecwcs.Cleanedsection()

    _copy_non_excluded(old_data=section.data,
                       new_data=filtered_section_data,
                       excluded_list=filtered_section_excluded)

    filtered_section_data.trip_id = new_trip_entry.get_id()

    # Now that we have constructed the section object, we have to filter and
    # store the related data points
    with_speeds_df = get_filtered_points(section, filtered_section_data)
    speeds = list(with_speeds_df.speed)
    distances = list(with_speeds_df.distance)
    filtered_section_data.speeds = speeds
    filtered_section_data.distances = distances
    filtered_section_data.distance = sum(distances)
    filtered_section_entry = ecwe.Entry.create_entry(section.user_id,
                                                     esda.CLEANED_SECTION_KEY,
                                                     filtered_section_data,
                                                     create_id=True)

    ts = esta.TimeSeries.get_time_series(section.user_id)
    for row in with_speeds_df.to_dict('records'):
        loc_row = ecwrl.Recreatedlocation(row)
        loc_row.mode = section.data.sensed_mode
        loc_row.section = filtered_section_entry.get_id()
        ts.insert_data(section.user_id, esda.CLEANED_LOCATION_KEY, loc_row)

    return filtered_section_entry
Esempio n. 3
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 def testCalAccelsWithThreePoints(self):
     testSec = ecwcs.Cleanedsection()
     testSec.speeds = [3, 6]
     print(fc.calAccels(testSec))
     self.assertEqual(fc.calAccels(testSec).tolist(), [3 / 30, 3 / 30])
Esempio n. 4
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 def testCalAccelsWithTwoPoints(self):
     testSec = ecwcs.Cleanedsection()
     testSec.speeds = [3]
     self.assertEqual(fc.calAccels(testSec).tolist(), [0.1])
Esempio n. 5
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 def testCalAccelsWithOnePoint(self):
     testSec = ecwcs.Cleanedsection()
     testSec.speeds = []
     self.assertEqual(fc.calAccels(testSec), None)
Esempio n. 6
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 def testCalSpeedsWithTwoPoints(self):
     testSec = ecwcs.Cleanedsection()
     testSec.speeds = [5]
     self.assertEqual(fc.calSpeeds(testSec), [5])
Esempio n. 7
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 def testCalSpeedsWithZeroTime(self):
     testSec = ecwcs.Cleanedsection()
     testSec.speeds = []
     self.assertEqual(fc.calSpeeds(testSec), [])