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const.py
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const.py
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#!/usr/bin/env python
# -*- coding: utf-8 -*-
################################## WORKING ###########################################
# if is set to false build new dataset from directory with original files collected from users
HAVE_DT = False
# if is set to true use sintetic data to train the model
SINTETIC_LEARNING = False
################################## Directories ########################################
# working directory
DIR_TM = './TransportationData'
# directory with original files collected from users
DIR_RAW_DATA_ORIGINAL = DIR_TM + '/_RawDataOriginal'
#DIR_RAW_DATA_ORIGINAL = DIR_TM + '/prova'
#DIR_RAW_DATA_ORIGINAL = DIR_TM + '/corrupted_rec'
# directory to fill with correct files
DIR_RAW_DATA_CORRECT = DIR_TM + '/_RawDataCorrect/'
# directory to fill with correct files and sensor data after transformations
DIR_RAW_DATA_TRANSFORM = DIR_TM + '/_RawDataTransform/'
# directory to fill with all file transformed according to dataset header
DIR_RAW_DATA_HEADER = DIR_TM + '/_RawDataHeader'
# directory to fill with all file transformed according to dataset header and features on time windows
DIR_RAW_DATA_FEATURES = DIR_TM + '/_RawDataFeatures'
# directory to fill with dataset file
DIR_DATASET = DIR_TM + '/_Dataset'
# directory to fill with sintetic dataset file
DIR_SINTETIC_RAW_DATASET = DIR_TM + '/_SinteticDatasetCorrect'
# directory to fill with correct sintetic files and sensor data after transformations
DIR_SINTETIC_RAW_DATA_TRANSFORM = DIR_TM + '/_SinteticRawDataTransform/'
# directory to fill with all file transformed according to dataset header
DIR_SINTETIC_RAW_DATA_HEADER = DIR_TM + '/_SinteticRawDataHeader/'
# directory to fill with all sintetic file transformed according to dataset header and features on time windows
DIR_SINTETIC_RAW_DATA_FEATURES = DIR_TM + '/_SinteticRawDataFeatures'
# directory to fill with dataset file
DIR_SINTETIC_DATASET = DIR_TM + '/_SinteticDataset'
# directory to fill with all results
DIR_RESULTS = './TransportationDetectionResults'
##################################### Files ###########################################
CLEAN_LOG = 'cleanLog.log'
# file for save users and sensors support
FILE_SUPPORT = 'sensors_support.csv'
# dataset file name
FILE_DATASET = "dataset.csv"
# sintetic dataset file name
SINTETIC_FILE_DATASET = "sinteticdataset.csv"
# balanced files name
FILE_DATASET_BALANCED = "dataset_balanced.csv"
FILE_TRAINING = "training_balanced.csv"
FILE_TEST = "test_balanced.csv"
FILE_CV = "cv_balanced.csv"
SINTETIC_FILE_TEST = "sintetic_test_balanced.csv"
SINTETIC_FILE_CV = "sintetic_cv_balanced.csv"
SINTETIC_FILE_DATASET_BALANCED = "sintetic_dataset_balanced.csv"
SINTETIC_FILE_TRAINING = "sintetic_training_balanced.csv"
# classification results
FILE_DECISION_TREE_RESULTS = "_decision_tree.csv"
FILE_RANDOM_FOREST_RESULTS = "_random_forest.csv"
FILE_NEURAL_NETWORK_RESULTS = "_neural_network.csv"
FILE_SUPPORT_VECTOR_MACHINE_RESULTS = "_support_vector_machine.csv"
# classification combination of classes results
FILE_TWO_CLASSES_COMBINATION = "_two_classes_combination.csv"
# leave one subject out results
FILE_LEAVE_ONE_SUBJECT_OUT = "_leave_one_subject_out.csv"
# single sensor analysis
FILE_SINGLE_SENSOR_ANALYSIS = "_single_sensors_accuracy.csv"
#######################################################################################
################################## Sensors #############################################
################## list of sensors to exclude for classification #######################
SENSORS_TO_EXCLUDE_FROM_FILES = ['', 'com.samsung.sensor.grip']
SENSORS_TO_EXCLUDE_FROM_DATASET = ['com.google.sensor.internal_temperature', 'com.qti.sensor.amd',
'com.qti.sensor.rmd', 'android.sensor.tilt_detector',
'android.sensor.geomagnetic_rotation_vector', 'android.sensor.step_detector',
'android.sensor.gesture']
# compute magnitude
SENSOR_TO_TRANSFORM_MAGNITUDE = ['android.sensor.accelerometer', 'android.sensor.orientation',
'android.sensor.linear_acceleration', 'android.sensor.gyroscope',
'android.sensor.magnetic_field', 'android.sensor.magnetic_field_uncalibrated',
'android.sensor.gyroscope_uncalibrated', 'android.sensor.gravity']
# compute sin(θ/2)
SENSOR_TO_TRANSFROM_4ROTATION = ['android.sensor.rotation_vector',
'android.sensor.game_rotation_vector']
# sensors for which it is relevant only the first data
SENSOR_TO_TAKE_FIRST = ['android.sensor.light', 'speed', 'android.sensor.proximity', 'android.sensor.pressure']
#######################################################################################
################################# Time Division ########################################
# dimension in second
WINDOW_DIMENSION = 5
# in our application every second the application write 10 model
SAMPLE_FOR_SECOND = 1000
#######################################################################################
################################# Split rules ########################################
TRAINING_PERC = 0.5
TEST_PERC = 0.5
CV_PERC = 0.0
#######################################################################################
###################### sensor classification levels ###################################
sensor_to_exclude_first = ['com.google.sensor.internal_temperature',
'com.qti.sensor.amd',
'com.qti.sensor.rmd',
'android.sensor.step_detector',
'android.sensor.tilt_detector',
'android.sensor.geomagnetic_rotation_vector',
'android.sensor.step_counter',
'android.sensor.pressure',
'android.sensor.magnetic_field_uncalibrated',
'android.sensor.proximity',
'android.sensor.magnetic_field',
'android.sensor.gravity',
'android.sensor.light',
'android.sensor.gesture',
'android.sensor.linear_acceleration',
'android.sensor.orientation',
'android.sensor.rotation_vector',
'android.sensor.game_rotation_vector',
'android.sensor.gyroscope_uncalibrated',
'activityrecognition',
'speed',
'time']
sensor_to_exclude_second = ['com.google.sensor.internal_temperature',
'com.qti.sensor.amd',
'com.qti.sensor.rmd',
'android.sensor.step_detector',
'android.sensor.tilt_detector',
'android.sensor.geomagnetic_rotation_vector',
'android.sensor.step_counter',
'android.sensor.pressure',
'android.sensor.magnetic_field_uncalibrated',
'android.sensor.proximity',
'android.sensor.magnetic_field',
'android.sensor.gravity',
'android.sensor.light',
'android.sensor.gesture',
'speed',
'activityrecognition',
'time']
sensors_to_exclude_third = ['com.google.sensor.internal_temperature',
'com.qti.sensor.amd',
'com.qti.sensor.rmd',
'android.sensor.step_detector',
'android.sensor.tilt_detector',
'android.sensor.geomagnetic_rotation_vector',
'android.sensor.step_counter',
'android.sensor.pressure',
'android.sensor.magnetic_field_uncalibrated',
'android.sensor.proximity',
'android.sensor.magnetic_field',
'android.sensor.gravity',
'android.sensor.light',
'android.sensor.gesture',
'activityrecognition',
'time']
########################################################################################
###################### classification algorithms parameters ##############################
# repeat time for single sensors classification
REPEAT = 30
# random forest
PAR_RF_ESTIMATOR = 100
# neural network
PAR_NN_NEURONS = {1: 900, 2: 880, 3: 600}
PAR_NN_ALPHA = {1: 0.0001, 2: 0.000002, 3: 0.000006}
PAR_NN_MAX_ITER = 600
PAR_NN_TOL = -1
# support vector machine
PAR_SVM_C = {1: 180,2: 100, 3: 100}
PAR_SVM_GAMMA = {1: 1.1 ,2: 0.1, 3:0.1}
################################### data type for dataset ##################################
DATASET_DATA_TYPE = {"user_id": int}