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Tutorial2_DelvingDeeper.py
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Tutorial2_DelvingDeeper.py
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#!/usr/bin/env python3
# -*- coding: utf-8 -*-
"""
Created on Mon Apr 13 11:34:26 2020
Script for lesson 5 of "Friends of Tracking" #FoT
Data can be found at: https://github.com/metrica-sports/sample-data
Accompanying video tutorials can be found here: https://www.youtube.com/channel/UCUBFJYcag8j2rm_9HkrrA7w
GitHub repo: https://github.com/Friends-of-Tracking-Data-FoTD/LaurieOnTracking
@author: Laurie Shaw (@EightyFivePoint)
"""
import Metrica_IO as mio
import Metrica_Viz as mviz
import Metrica_Velocities as mvel
import matplotlib.pyplot as plt
import numpy as np
import pandas as pd
# set up initial path to data
DATADIR = '/PATH/TO/WHERE/YOU/SAVED/THE/SAMPLE/DATA'
game_id = 2 # let's look at sample match 2
# read in the event data
events = mio.read_event_data(DATADIR,game_id)
# read in tracking data
tracking_home = mio.tracking_data(DATADIR,game_id,'Home')
tracking_away = mio.tracking_data(DATADIR,game_id,'Away')
# Convert positions from metrica units to meters (note change in Metrica's coordinate system since the last lesson)
tracking_home = mio.to_metric_coordinates(tracking_home)
tracking_away = mio.to_metric_coordinates(tracking_away)
events = mio.to_metric_coordinates(events)
# reverse direction of play in the second half so that home team is always attacking from right->left
tracking_home,tracking_away,events = mio.to_single_playing_direction(tracking_home,tracking_away,events)
# Making a movie of the second home team goal
#PLOTDIR = DATADIR
#mviz.save_match_clip(tracking_home.iloc[73600:73600+500],tracking_away.iloc[73600:73600+500],PLOTDIR,fname='home_goal_2',include_player_velocities=False)
# Calculate player velocities
tracking_home = mvel.calc_player_velocities(tracking_home,smoothing=True)
tracking_away = mvel.calc_player_velocities(tracking_away,smoothing=True)
# **** NOTE *****
# if the lines above produce an error (happens for one version of numpy) change them to the lines below:
# ***************
#tracking_home = mvel.calc_player_velocities(tracking_home,smoothing=True,filter_='moving_average')
#tracking_away = mvel.calc_player_velocities(tracking_away,smoothing=True,filter_='moving_average')
# plot a random frame, plotting the player velocities using quivers
mviz.plot_frame( tracking_home.loc[10000], tracking_away.loc[10000], include_player_velocities=True, annotate=True)
# Create a Physical summary dataframe for home players
home_players = np.unique( [ c.split('_')[1] for c in tracking_home.columns if c[:4] == 'Home' ] )
home_summary = pd.DataFrame(index=home_players)
# Calculate minutes played for each player
minutes = []
for player in home_players:
# search for first and last frames that we have a position observation for each player (when a player is not on the pitch positions are NaN)
column = 'Home_' + player + '_x' # use player x-position coordinate
player_minutes = ( tracking_home[column].last_valid_index() - tracking_home[column].first_valid_index() + 1 ) / 25 / 60. # convert to minutes
minutes.append( player_minutes )
home_summary['Minutes Played'] = minutes
home_summary = home_summary.sort_values(['Minutes Played'], ascending=False)
# Calculate total distance covered for each player
distance = []
for player in home_summary.index:
column = 'Home_' + player + '_speed'
player_distance = tracking_home[column].sum()/25./1000 # this is the sum of the distance travelled from one observation to the next (1/25 = 40ms) in km.
distance.append( player_distance )
home_summary['Distance [km]'] = distance
# make a simple bar chart of distance covered for each player
plt.subplots()
ax = home_summary['Distance [km]'].plot.bar(rot=0)
ax.set_xlabel('Player')
ax.set_ylabel('Distance covered [km]')
# plot positions at KO (to find out what position each player is playing)
mviz.plot_frame( tracking_home.loc[51], tracking_away.loc[51], include_player_velocities=False, annotate=True)
# now calculate distance covered while: walking, joggings, running, sprinting
walking = []
jogging = []
running = []
sprinting = []
for player in home_summary.index:
column = 'Home_' + player + '_speed'
# walking (less than 2 m/s)
player_distance = tracking_home.loc[tracking_home[column] < 2, column].sum()/25./1000
walking.append( player_distance )
# jogging (between 2 and 4 m/s)
player_distance = tracking_home.loc[ (tracking_home[column] >= 2) & (tracking_home[column] < 4), column].sum()/25./1000
jogging.append( player_distance )
# running (between 4 and 7 m/s)
player_distance = tracking_home.loc[ (tracking_home[column] >= 4) & (tracking_home[column] < 7), column].sum()/25./1000
running.append( player_distance )
# sprinting (greater than 7 m/s)
player_distance = tracking_home.loc[ tracking_home[column] >= 7, column].sum()/25./1000
sprinting.append( player_distance )
home_summary['Walking [km]'] = walking
home_summary['Jogging [km]'] = jogging
home_summary['Running [km]'] = running
home_summary['Sprinting [km]'] = sprinting
# make a clustered bar chart of distance covered for each player at each speed
ax = home_summary[['Walking [km]','Jogging [km]','Running [km]','Sprinting [km]']].plot.bar(colormap='coolwarm')
ax.set_xlabel('Player')
ax.set_ylabel('Distance covered [m]')
# sustained sprints: how many sustained sprints per match did each player complete? Defined as maintaining a speed > 7 m/s for at least 1 second
nsprints = []
sprint_threshold = 7 # minimum speed to be defined as a sprint (m/s)
sprint_window = 1*25 # minimum duration sprint should be sustained (in this case, 1 second = 25 consecutive frames)
for player in home_summary.index:
column = 'Home_' + player + '_speed'
# trick here is to convolve speed with a window of size 'sprint_window', and find number of occassions that sprint was sustained for at least one window length
# diff helps us to identify when the window starts
player_sprints = np.diff( 1*( np.convolve( 1*(tracking_home[column]>=sprint_threshold), np.ones(sprint_window), mode='same' ) >= sprint_window ) )
nsprints.append( np.sum( player_sprints == 1 ) )
home_summary['# sprints'] = nsprints
# Plot the trajectories for each of player 10's sprints
player = '10'
column = 'Home_' + player + '_speed' # spped
column_x = 'Home_' + player + '_x' # x position
column_y = 'Home_' + player + '_y' # y position
# same trick as before to find start and end indices of windows of size 'sprint_window' in which player speed was above the sprint_threshold
player_sprints = np.diff( 1*( np.convolve( 1*(tracking_home[column]>=sprint_threshold), np.ones(sprint_window), mode='same' ) >= sprint_window ) )
player_sprints_start = np.where( player_sprints == 1 )[0] - int(sprint_window/2) + 1 # adding sprint_window/2 because of the way that the convolution is centred
player_sprints_end = np.where( player_sprints == -1 )[0] + int(sprint_window/2) + 1
# now plot all the sprints
fig,ax = mviz.plot_pitch()
for s,e in zip(player_sprints_start,player_sprints_end):
ax.plot(tracking_home[column_x].iloc[s],tracking_home[column_y].iloc[s],'ro')
ax.plot(tracking_home[column_x].iloc[s:e+1],tracking_home[column_y].iloc[s:e+1],'r')
# END