def getLimits(self):
    elevatorPositionLimit = self.doubleSpinBox_elevatorPosition.value()
    aileronPositionLimit = self.doubleSpinBox_aileronPosition.value()
    rudderPositionLimit = self.doubleSpinBox_rudderPosition.value()

    pitchRateLimit = self.doubleSpinBox_pitchRate.value()
    rollRateLimit = self.doubleSpinBox_rollRate.value()
    yawRateLimit = self.doubleSpinBox_yawRate.value()
    print(yawRateLimit) # TODO: Delete after debugging
    # FIXME: switch from @classmethod to standard method later
    DataHandler.setManuallyDefinedLimts({"elevatorPositionLimit": elevatorPositionLimit, "aileronPositionLimit": aileronPositionLimit, "rudderPositionLimit": rudderPositionLimit,
                                     "pitchRateLimit": pitchRateLimit, "rollRateLimit": rollRateLimit, "yawRateLimit": yawRateLimit})
Esempio n. 2
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def startTracking(self):
    # Attempt to get time RFD starts tracking and begin counting elapsed time
    try:
        if (DataHandler.lockStartTime == False):
            DataHandler.timeStartClicked = datetime.datetime.now()  # Get datetime for displaying start time to screen
            DataHandler.startTime = time.time()                     # Get time for counting elapsed time
            self.label_infoBar_startTime.setText(DataHandler.timeStartClicked.strftime("Start Time: %H:%M:%S"))

            DataHandler.lockStartTime = True

    except Exception as ex:
        print("Could not request time() and/or datetime(): ", ex)

    # Initiate telemetry tracking and call methods which process incoming data
    try:
        self.label_infoBar_status.setText("Status: Tracking")

        retrievePCCLog(DataHandler)         # Method in pccFileHandler.py which reads data in and validates segments
        PopulateDictionary(DataHandler)     # Method in dataTransformer.py which checks segment integrity and stores segment in a key/value dictionary for later use
        UpdateHUD(self, DataHandler)        # Method in dataValidator.py which updates the GUI with recently read-in values
        writeToLogFile(DataHandler)         # Method in pccfileHandler.py which writes data, and alarm states to log

        # Get elapsed time and PCC time
        DataHandler.elapsedTime = (time.time() - DataHandler.startTime)
        PCCTime = DataHandler.getRawTelemetryData()
        PCCTime = PCCTime["<Clock>[ms]"]

        # Update GUI labels to elapsed time and PCC time
        self.label_infoBar_elapsedTime.setText(time.strftime("Elapsed Time: %H:%M:%S", time.gmtime(DataHandler.elapsedTime)))
        self.label_infoBar_PCCTime.setText("PCC Time: " + str(PCCTime))

        return 1

    except Exception as ex:
        print("Error occurred while initializing tracking ", ex)
        return 1
Esempio n. 3
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    def __init__(self, data_path, image_path, until_frame=None):
        super(MainWindow, self).__init__()
        # create a data reader object
        self.handler = DataHandler(data_path = data_path,
                                   image_path = image_path,
                                   image_spacing = -5,
                                   scaling_factor = .25,
                                   sigma = 3)


        """
        Data loading and management
        """
        # read in the .ass subtitle data (gaze points and aois)
        self.handler.readAss()
        # throw away bunch of data (for faster testing)


        if until_frame is not None:
            self.handler.gaze_points = self.handler.gaze_points[:until_frame,:,:]

        # load the video frames (single .jpg images in folder) [frame size is obtained her]
        self.handler.loadFramesAsGLImageItems()
        # transform gaze points data into gaussians (ImageItems)
        self.handler.gazePointsToGaussians()
        # transform aois into GLMeshItems
        self.handler.aoisToGLMeshItems(option='translucent')
        # create 3d lines from gaze points:
        self.handler.gazePointsToLines(option='translucent')
        # create heatmaps:
        self.handler.gazePointsToHeatmaps()

        self.handler.aoisToGLLinePlotItems(option='opaque')


        """
        Visualization and Plotting
        """
        # instantiate window for the data visualization
        self.plotWindow = PlotWindow(parent=None)

        #add surface under and behind the scene
        surf_color = [0.945, 0.9098, 0.6823, 1.0]
        self.surf1 = np.zeros([2,2])
        self.surf1 = gl.GLSurfacePlotItem(z=self.surf1,
                                          color = surf_color)
        self.surf1.scale(self.handler.gaze_points.shape[0]*self.handler.image_spacing*1.1,
                        self.handler.frame_size[1]*1.1,
                        1)
        self.surf1.translate(-self.handler.gaze_points.shape[0]*self.handler.image_spacing*0.05,
                             -self.handler.frame_size[1]*0.05,
                             -self.handler.frame_size[0]-100*self.handler.scaling_factor)
        self.plotWindow.addItem(self.surf1)

        self.surf2 = np.zeros([2,2])
        self.surf2 = gl.GLSurfacePlotItem(z=self.surf2,
                                          color = surf_color)
        self.surf2.scale(self.handler.gaze_points.shape[0]*self.handler.image_spacing*1.1,
                        self.handler.frame_size[0]*1.1,
                        1)
        self.surf2.rotate(90,1,0,0)
        self.surf2.translate(-0.05*self.handler.gaze_points.shape[0]*self.handler.image_spacing,
                             -100 * self.handler.scaling_factor,
                             -self.handler.frame_size[0]*1.05)
        self.plotWindow.addItem(self.surf2)


        '''
        adding heatmaps
        '''
        self.plotWindow.addItem(self.handler.XYHeatmap)
        self.plotWindow.addItem(self.handler.XZHeatmap)



        # put video frames inside of visualization
        for frame in self.handler.frames:
            self.plotWindow.addItem(frame)
            frame.setVisible(False)

        # put gaussians on top of video frames:
        for gaussian in self.handler.gaussians:
            self.plotWindow.addItem(gaussian)
            gaussian.setVisible(False)

        # add aoi meshes into visualization
        for mesh in self.handler.aoiMeshes:
            self.plotWindow.addItem(mesh)
            #mesh.setVisible(False)
        self.handler.frames[0].setVisible(True)

        # add line plots
        for line in self.handler.gazePointsLinePlotItems:
            self.plotWindow.addItem(line)

        # add aoi frame lines
        for lines in self.handler.aoiLines:
            for line in lines:
                self.plotWindow.addItem(line)


        #self.horizontalLayout.addWidget(self.plotWindow)
        #self.plotWindow.show()


        self.cw = ControlWindow(mainWindow=self, handler=self.handler,parent=None)
        self.cw.showFrameNum(0)
        self.cw.showGaussianNum(0)

        self.mainLayout = QHBoxLayout(self)

        self.mainLayout.addWidget(self.cw,1)
        self.mainLayout.addWidget(self.plotWindow,5)

        self.setGeometry(100,100,900,300)
        self.show()
Esempio n. 4
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from sklearn.metrics import precision_score, recall_score, roc_auc_score, roc_curve, confusion_matrix, accuracy_score
from sklearn.model_selection import train_test_split
from sklearn import svm, preprocessing
from sklearn.naive_bayes import GaussianNB, MultinomialNB

from dataHandler import DataHandler
from boW import EOS_token

RSEED = 50
SIZE = 10
NCLASS = 3
TFIDF = False
NORMALIZE = False
np.random.seed(RSEED)

d = DataHandler()
d.createDictionary()

#prepare data
data = d.readDataPreproc(pre=True)[1:]

x = [d.askDictionary.seq2tensor(xi[1], tfidf=TFIDF) for xi in data]
x = np.array(x)

if NORMALIZE:
    x = preprocessing.normalize(x)

if NCLASS == 3:
    y = [
        0 if yi[2] == "alegria" else 1 if yi[2] == "neutro" else 2
        for yi in data
Esempio n. 5
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#! /usr/bin/python
# -*- coding: utf-8 -*-

from dataHandler import DataHandler
from network import Network
import layer
import activationFunctions

if __name__ == '__main__':
    EPOCHS = 100
    ETA = 0.03
    PATH = "mnist/"
    CKPT_DIR = "./ckpt/"
    MBS = 10  #mini_batch_size

    dataHandler = DataHandler(PATH)
    dataHandler.load_training()

    sizes = [784, 16, 16, 10]
    network = Network(sizes, dataHandler, EPOCHS / 10, CKPT_DIR,
                      activationFunctions.sigmoid)
    network.weights_for_humans("./")
    # network.SGD(dataHandler, EPOCHS, MBS, ETA, True)
Esempio n. 6
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plt.style.use(['ggplot'])
plt.tight_layout()
plt.gcf().subplots_adjust(bottom=0.13)
plt.gcf().subplots_adjust(left=0.13)
plt.rcParams["figure.figsize"] = (14, 12)
plt.ticklabel_format(style='plain', useOffset=False)

#%%
data = pd.read_csv('../tommi+diego_test_data.csv', sep=";",
                   header=0)  #combined dataset

data = data.loc[data["Warning_code"] == 0]
data = data.reset_index(drop=True)

data = DataHandler.calculateTotalForce(data)
data = DataHandler.calculateStepTime(data)
data = DataHandler.calculateForceValues(data)
data = DataHandler.calculatePhaseForceValues(data)

#%% Classifier testing, rbf kernel
x_cols = DataColumns.getSelectedCols3()
y_cols = ["label"]
plots = True

#Parameters
kern = "rbf"

avg_acc, real_label, pred_label = SvmClassifiers.testSvm(
    data, kern, x_cols, y_cols, plots)
Esempio n. 7
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class MyHandler(
        http.server.BaseHTTPRequestHandler
):  # MyHandler extends http.server.BaseHTTPRequestHandler and implements the method do_Get and do_POST

    datahandler = DataHandler()

    def do_GET(self):
        if self.path == '/favicon.ico' and str(self.path).find('?') == -1:
            return
        try:
            start = timer()
            print(threading.currentThread().getName())
            # print("\nGET {}".format(str(self.path)))
            # in the application the url must be 'https://ip/?room=number&image=something&pdf=something'

            keys = parse_qs(self.path[2:])
            if 'check' in keys:
                self.sendStatistic()
                print('STATISTICHE INVIATE')
            elif 'room' in keys:
                room = str(keys.get('room'))
                room = room.replace('[\'', '').replace('\']', '')
                if 'image' in keys:
                    image = str(keys.get('image'))
                    image = image.replace('[\'', '').replace('\']', '')
                    self.sendImage(room, image)
                    print('la room selezionata è :', room)
                    print('immagine richiesta:', image)
                    end = timer()
                    time = float("{0:.8f}".format(end - start))
                else:
                    self.sendContent(room)
                    print('la room selezionata è :', room)
                    print('immagine richiesta: nessuna')
                    end = timer()
                    time = float("{0:.8f}".format(end - start))
                    self.datahandler.addResponseTime(time)
            elif 'pdf' in keys:
                pdf = str(keys.get('pdf'))
                pdf = pdf.replace('[\'', '').replace('\']', '')
                self.sendPdf(pdf)
                print('pdf inviato: ', self.datahandler.pdf[pdf])
                end = timer()
                time = float("{0:.8f}".format(end - start))
                self.datahandler.addResponseTime(time)
            else:
                print('invalid url')
                self.send_error(404, 'File Not Found: %s' % self.path)
            end = timer()
            time = float("{0:.8f}".format(end - start))
            print('response in:', time)
        except FileNotFoundError:
            print('invalid url')
            self.send_error(404, 'File Not Found: %s' % self.path)
        except:
            self.datahandler.addError()

    def doHead(self, contentType='txt'):  # adding headers
        self.send_response(http.HTTPStatus.OK)  # it is a protocol
        contentType = contentType + ';charset=utf-8;'
        self.send_header('Content-type', contentType)
        self.end_headers()

    def sendContent(self, room='example'):  # send title, description etc..
        self.doHead('json')
        self.wfile.write(
            self.datahandler.getContent(room).encode(
                'UTF-8', 'replace'))  # before sending message must be encode
        self.wfile.flush()

    def sendPdf(self, pdf="0"):  # send title, description etc..
        self.doHead('pdf')
        self.wfile.write(
            self.load(self.datahandler.datasPath +
                      self.datahandler.getPdfName(pdf))
        )  # before sending message must be encode
        self.wfile.flush()

    def sendImage(self, room='example', image=1):  # send images
        self.doHead('image')
        self.wfile.write(self.load(self.datahandler.getImageName(room, image)))
        self.wfile.flush()

    def sendStatistic(self):
        self.doHead('json')
        self.wfile.write(self.datahandler.getStatistic().encode(
            'UTF-8', 'replace'))  # before sending message must be encode
        self.wfile.flush()

    def load(self, file):  # open image
        f = open(file, 'rb')
        s = f.read()
        f.close()
        return s

    def encode(self, file):  # encoding image
        return bytes(file, 'UTF-8')

    def do_POST(self):
        self.do_GET()
Esempio n. 8
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            print('=', pair[1])
            output_words, attentions = self.evaluate(pair[0])
            output_sentence = ' '.join(output_words)
            print('<', output_sentence)
            print('')

    def evaluateAndShowAttention(self, input_sentence):
        output_words, attentions = self.evaluate(input_sentence)
        print('input =', input_sentence)
        print('output =', ' '.join(output_words))
        showAttention(input_sentence, output_words, attentions)


if __name__ == '__main__':

    d = DataHandler()
    d.createDictionary()
    pairs = d.readDataPreproc()

    s = Seq2Seq(d.askDictionary, d.ansDictionary)

    if isfile(PATH):
        s = torch.load(PATH)
        showPlot(s.plot_losses,
                 title="Loss",
                 axis=["Milhares de iterações", "loss"])
    else:
        s.trainIters(pairs, 10000, print_every=5000)
        torch.save(s.state_dict(), "disc_" + PATH)
        torch.save(s, PATH)
Esempio n. 9
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#!/usr/bin/env python
import os
import json
from dataHandler import DataHandler

from flask import Flask, request, send_from_directory, jsonify

app = Flask(__name__)

www = os.path.join(os.path.dirname(os.path.abspath(__file__)), "www")

dh = DataHandler(max=20)


#-------------------------------------------------------------------------------
# test the data APIs with curl:
#
#   post data:
#     curl -d "datum=321" http://localhost:5000/api/data
#
#   get data:
#     curl http://localhost:5000/api/data
#
#-------------------------------------------------------------------------------
@app.route('/api/data', methods=['POST'])
def api_data_post():
    datum = request.form['datum']

    try:
        json.loads(datum)
    except:
Esempio n. 10
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from sklearn.metrics import roc_auc_score

plt.style.use(['ggplot'])
plt.tight_layout()
plt.gcf().subplots_adjust(bottom=0.13)
plt.gcf().subplots_adjust(left=0.13)
plt.rcParams["figure.figsize"] = (14, 12)
plt.ticklabel_format(style='plain', useOffset=False)

#%%
data = pd.read_csv('../tommi+diego_test_data.csv', sep=";", header=0)

data = data.loc[data["Warning_code"] == 0]
data = data.reset_index(drop=True)

tforce_DF = DataHandler.calculateTotalForce(data)
step_t_DF = DataHandler.calculateStepTime(data)

#%% Bagging test

avg_acc, real_label, pred_label = Ensemble.testBagging(step_t_DF)

pred_label_df = pred_label
real_label_df = real_label

pred_label_df = pred_label_df.replace("Normal", 0)
pred_label_df = pred_label_df.replace("Fall", 1)

real_label_df = real_label_df.replace("Normal", 0)
real_label_df = real_label_df.replace("Fall", 1)
Esempio n. 11
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"""
from PyQt5.QtCore import QThreadPool, QRunnable, pyqtSlot
from dataTransformer import *
from pccFileHandler import *
from dataHandler import DataHandler
from dataValidator import *
from mainInterface import *

""" No longer need to import limits dialog as manually defined limits by the user are no longer
    needed/used. Leaving the import here for now but commented out in case the feature for manual
    limits ever needs to be enabled again (unlikely).
from limitsdialog import Ui_Dialog as Form, Ui_Dialog """

# Initialize a new DataHandler() class instance for storing/updating
# important information used to maintain successful execution.
DataHandler = DataHandler()

def openPCCTelemetryFile(self):
    # Attempt to open user provided .tel file
    try:
        pccTelemetryFile = openFile(self, DataHandler)

    # Catch any I/O or File Not Found errors
    except Exception as ex:
        print("Could not open Telemetry File (check file type and try again).", ex)

def Driver_openOutputLogFile(self):
    # Attempt to open or create the user specified file for RFD to log output
    try:
        FileHandler_OpenOutputLogFile(self, DataHandler)
Esempio n. 12
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 def __init__(self, interface):
     self.interface = interface
     self.dh = DataHandler(self)
Esempio n. 13
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class EventHandler:
    def __init__(self, interface):
        self.interface = interface
        self.dh = DataHandler(self)

    def function(self):
        # dummy function
        pass

    def askOpenFileName(self):
        selectedFile = askopenfilename()
        self.interface.setFileName(selectedFile)

    def linearRegression(self):
        if self.interface.checkRequirements():
            # Update Running Label
            self.interface.setRunningName("Linear Regression")
            # Load Column Names from CSV
            variables_list = self.dh.loadCSV(self.interface.getFileName())
            # variables_list = ['loan_status', 'loan_amnt', 'int_rate', 'installment','loan_status2', 'loan_amnt2', 'int_rate2', 'installment2', 'loan_status3', 'loan_amnt3', 'int_rate3', 'installment3']
            # Create Linear Regression GUI
            self.interface.createLinearRegression(variables_list)
        else:
            self.interface.promptAlertForCSV()

    def addSelectedVariables(self):
        # Get Variables List Box
        variables_lb = self.interface.getVariablesLB()
        # Get selected text in variables list box
        variables_list = variables_lb.get(0, 'end')
        selected_list = [
            variables_lb.get(i) for i in variables_lb.curselection()
        ]
        nonselected_list = list(set(variables_list).difference(selected_list))
        # Add Selected to Selected List Box
        for selected in selected_list:
            self.interface.appendSelectedVariablesLB(selected)
        # Refresh Variables List Box
        self.interface.refreshVariablesLB(nonselected_list)

    def removeSelectedVariables(self):
        # Get Selected Variables List Box
        selected_lb = self.interface.getSelectedVariablesLB()
        # Get variable text in selected variables list box
        selected_list = selected_lb.get(0, 'end')
        variables_list = [
            selected_lb.get(i) for i in selected_lb.curselection()
        ]
        nonselected_list = list(set(selected_list).difference(variables_list))
        # Add variables to Varaibles List Box
        for variable in variables_list:
            self.interface.appendVariablesLB(variable)
        # Refresh Variables List Box
        self.interface.refreshSelectedVariablesLB(nonselected_list)

    def addCategoricalVariables(self):
        # Get Variables List Box
        variables_lb = self.interface.getVariablesLB()
        # Get selected text in variables list box
        variables_list = variables_lb.get(0, 'end')
        categorical_list = [
            variables_lb.get(i) for i in variables_lb.curselection()
        ]
        noncategorical_list = list(
            set(variables_list).difference(categorical_list))
        # Add Categorical to Categorical List Box
        for categorical in categorical_list:
            self.interface.appendCategoricalVariablesLB(categorical)
        # Refresh Variables List Box
        self.interface.refreshVariablesLB(noncategorical_list)

    def removeCategoricalVariables(self):
        # Get Categorical Variables List Box
        categorical_lb = self.interface.getCategoricalVariablesLB()
        # Get variable text in selected variables list box
        categorical_list = categorical_lb.get(0, 'end')
        variables_list = [
            categorical_lb.get(i) for i in categorical_lb.curselection()
        ]
        noncategorical_list = list(
            set(categorical_list).difference(variables_list))
        # Add variables to Varaibles List Box
        for variable in variables_list:
            self.interface.appendVariablesLB(variable)
        # Refresh Variables List Box
        self.interface.refreshCategoricalVariablesLB(noncategorical_list)

    def removeOutputVariables(self, __singlar=False):
        # Get Selected Output List Box
        output_lb = self.interface.getOutputVariablesLB()
        # Get variable text in output variables list box
        output_list = output_lb.get(0, 'end')

        variables_list = []
        if (__singlar):
            # Output List remove the old item (should be one or empty)
            variables_list = output_list
        else:
            variables_list = [
                output_lb.get(i) for i in output_lb.curselection()
            ]

        nonoutput_list = list(set(output_list).difference(variables_list))
        # Add variables to Varaibles List Box
        for variable in variables_list:
            self.interface.appendVariablesLB(variable)
        # Refresh Variables List Box
        self.interface.refreshOutputVariablesLB(nonoutput_list)

    def addOutputVariables(self, __singlar=False):
        variables_lb = self.interface.getVariablesLB()
        output_list = [
            variables_lb.get(i) for i in variables_lb.curselection()
        ]

        # take the first curselected only
        if ((__singlar) and (len(output_list) > 0)):
            output_list = [output_list[0]]
            # Clean out Output Listbox by Removing Output Variable and Add back into Variable List Box
            self.removeOutputVariables(True)

        variables_list = variables_lb.get(0, 'end')
        # Get the nonoutputs to refresh variable list box
        nonoutput_list = list(set(variables_list).difference(output_list))
        # Add output to Output List Box
        for output in output_list:
            self.interface.appendOutputVariablesLB(output)
        # Refresh Variables List Box
        self.interface.refreshVariablesLB(nonoutput_list)
Esempio n. 14
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class MyHandler(
        http.server.BaseHTTPRequestHandler
):  # MyHandler extends http.server.BaseHTTPRequestHandler and implements the method do_Get and do_POST

    datahandler = DataHandler()

    def do_GET(self):
        if self.path == '/favicon.ico' and str(self.path).find('?') == -1:
            return
        start = timer()
        #print("\nGET {}".format(str(self.path)))
        #in the application the url must be 'https://ip/?room=number&image=something&pdf=something'
        keys = parse_qs(self.path[2:])
        try:
            room = str(keys['room']).replace('[\'', '').replace('\']', '')
            image = str(keys['image']).replace('[\'', '').replace('\']', '')
            pdf = str(keys['pdf']).replace('[\'', '').replace('\']', '')
            if pdf != 'false':
                self.sendPdf(pdf)
                print('pdf inviato: ', self.datahandler.pdf[pdf])
            elif image.isdecimal():
                self.sendImage(room, image)
                print('la room selezionata è :', room)
                print('immagine richiesta:', image)
            else:
                self.sendContent(room)
                print('la room selezionata è :', room)
                print('immagine richiesta: nessuna')
            end = timer()
            print('response in:', end - start)
        except:

            print('error in sending response')

    def doHead(self, contentType='txt'):  #adding headers
        self.send_response(http.HTTPStatus.OK)  # it is a protocol
        contentType = contentType + ';charset=utf-8;'
        self.send_header('Content-type', contentType)
        self.end_headers()

    def sendContent(self, room='example'):  #send title, description etc..
        self.doHead('json')
        self.wfile.write(
            self.datahandler.getContent(room).encode(
                'UTF-8', 'replace'))  # before sending message must be encode
        self.wfile.flush()

    def sendPdf(self, pdf="0"):  #send title, description etc..
        self.doHead('pdf')
        self.wfile.write(
            self.load(self.datahandler.datasPath +
                      self.datahandler.getPdfName(pdf))
        )  # before sending message must be encode
        self.wfile.flush()

    def sendImage(self, room='example', image=1):  #send images
        self.doHead('image')
        self.wfile.write(self.load(self.datahandler.getImageName(room, image)))
        self.wfile.flush()

    def load(self, file):  #open image
        f = open(file, 'rb')
        s = f.read()
        f.close()
        return s

    def encode(self, file):  #encoding image
        return bytes(file, 'UTF-8')

    def do_POST(self):
        self.do_GET()
Esempio n. 15
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from columns import DataColumns
from dataHandler import DataHandler
from tfClassifiers import TfClassifiers
from collections import namedtuple

plt.style.use(['ggplot'])
plt.tight_layout()
plt.gcf().subplots_adjust(bottom=0.13)
plt.gcf().subplots_adjust(left=0.13)
plt.rcParams["figure.figsize"] = (14, 12)
plt.ticklabel_format(style='plain', useOffset=False)

#%%
data = pd.read_csv('../tommi_test_data.csv', sep=";", header=0)
data = data.loc[data["Warning_code"] == 0]
data = data.reset_index(drop=True)
basedf = data

tforce_DF = DataHandler.calculateTotalForce(data)
step_t_DF = DataHandler.calculateStepTime(data)

standardized_data = DataHandler.minmaxStandardizeForces(step_t_DF)

#%%
x_cols = DataColumns.getSelectedCols2()
y_cols = ["label"]
plots = True

avg_acc, real_label, pred_label = TfClassifiers.testNn(standardized_data,
                                                       x_cols, y_cols, plots)
Esempio n. 16
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def main():
    dataHandler = DataHandler("data.json")
Esempio n. 17
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plt.style.use(['ggplot'])
plt.tight_layout()
plt.gcf().subplots_adjust(bottom=0.13)
plt.gcf().subplots_adjust(left=0.13)
plt.rcParams["figure.figsize"] = (14, 12)
plt.ticklabel_format(style='plain', useOffset=False)

#%%
#data = pd.read_csv('../tommi_test_data.csv', sep=";", header=0)
data = pd.read_csv('../tommi_test_data_more_diff_steps.csv', sep=";", header=0)

data = data.loc[data["Warning_code"] == 0]
data = data.reset_index(drop=True)

tforce_DF = DataHandler.calculateTotalForce(data)
step_t_DF = DataHandler.calculateStepTime(data)

#%% Bagging test

avg_acc, real_label, pred_label = Ensemble.testBagging(step_t_DF)

pred_label_df = pred_label
real_label_df = real_label

pred_label_df = pred_label_df.replace("Normal", 0)
pred_label_df = pred_label_df.replace("Fall", 1)

real_label_df = real_label_df.replace("Normal", 0)
real_label_df = real_label_df.replace("Fall", 1)
plt.style.use(['ggplot'])
plt.tight_layout()
plt.gcf().subplots_adjust(bottom=0.13)
plt.gcf().subplots_adjust(left=0.13)
plt.rcParams["figure.figsize"] = (14, 12)
plt.ticklabel_format(style='plain', useOffset=False)

#%% errors out from data

data = pd.read_csv('../tommi_test_data_more_diff_steps.csv', sep=";",
                   header=0)  #harder data with various stepping styles
data = data.loc[data["Warning_code"] == 0]
data = data.reset_index(drop=True)
basedf = data

tforce_DF = DataHandler.calculateTotalForce(data)
step_t_DF = DataHandler.calculateStepTime(data)

standardized_data = DataHandler.minmaxStandardizeForces(step_t_DF)

#generating datasets where data has been suffled and last random x rows has been dropped and data is now balanced
dataset_amount = 1
drop_amount = 40
datasets = DataHandler.genRandomDatasets(data, dataset_amount, drop_amount)
data = datasets[0]
basedf

#%% quick check on data

xy_cols = DataColumns.getSelectedCols2andY()
data.loc[:, xy_cols]