Exemple #1
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def register_device():
    patient_id = request.json['patient_id']
    spimo_id = request.json['spimo_id']
    pedal_id = request.json['pedal_id']
    date_time = datetime.datetime.now()
    connection = get_connection()
    table_name = 'dp_pair'

    data = {'device_id': spimo_id}
    row = read_data(table_name, data)
    #scenario 2: No such device_id
    if row is None:
        close_connection(connection)
        return str(2)
    #scenario 1: Successful
    elif row.patient_id is None:
        data = {'patient_id': patient_id, 'updated_date': date_time}
        condition = {'device_id': spimo_id}
        update_data(table_name, data, condition)
        condition = {'device_id': pedal_id}
        update_data(table_name, data, condition)
        close_connection(connection)
        return str(1)
    #scenario 2: duplicated id
    else:
        close_connection(connection)
        return str(0)
Exemple #2
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def device_start():
    patient_id = request.json['patient_id']
    device_id = request.json['device_id']
    connection = get_connection()
    date_time = datetime.datetime.now()
    data = {'start_time': date_time}
    table_name = 'dp_pair'
    condition = {'device_id': device_id, 'patient_id': patient_id}
    update_data(table_name, data, condition)

    close_connection(connection)
    return str(1)
def handle_ml():
    session_id = request.json['session_id']
    seq = request.json['seq']
    table_name = 'transaction_table'
    connection = get_connection()
    text_senti_avg, text_senti_std, text_senti_min, text_senti_max = calculate_features(
        table_name, session_id, seq, connection)
    condition = {'session_id': session_id, 'seq': seq}
    features_data = {
        'text_senti_avg': text_senti_avg,
        'text_senti_std': text_senti_std,
        'text_senti_min': text_senti_min,
        'text_senti_max': text_senti_max
    }
    update_data(table_name, features_data, condition, connection)
    r_data = {'session_id': session_id, 'seq': seq}
    rows, number_rows = read_data(table_name, r_data, connection)
    emotion_label = send_request_to_ml(rows)
    features_data = {'result': emotion_label}
    update_data(table_name, features_data, condition, connection)
    close_connection(connection)
    return emotion_label
Exemple #4
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def return_device():
    patient_id = request.json['patient_id']
    spimo_id = request.json['spimo_id']
    pedal_id = request.json['pedal_id']
    date_time = datetime.datetime.now()
    connection = get_connection()
    table_name = 'dp_pair'
    data = {'device_id': spimo_id}
    row = read_data(table_name, data)
    # device has been returned
    if row.patient_id is None:
        close_connection(connection)
        return str(0)
    else:
        data = {'patient_id': None, 'updated_date': None}
        condition = {'device_id': spimo_id}
        update_data(table_name, data, condition)
        condition = {'device_id': pedal_id}
        update_data(table_name, data, condition)

        close_connection(connection)
        return str(1)
def handle_audio():
    api_result = json.loads(request.form.get('data'))
    seq = api_result["seq"]
    device_id = api_result["device_id"]
    session_id = api_result["session_id"]
    audiofile = request.files['audio']
    filename = werkzeug.utils.secure_filename(audiofile.filename)
    audiofile.save(filename)
    if filename is not None:
        signal, rate = sf.read(filename)
        wav_length = len(signal) / rate  #second
        window_length = 1
        # for index in range(sample_per_wav): # take ten windows in an audio file
        window_seed = random.uniform(0, abs(wav_length - window_length))
        window_range = (window_seed, window_seed + window_length)
        window_signal = signal[int(window_range[0] *
                                   rate):int(window_range[1] * rate)]

        mfcc_feat = mfcc(window_signal)
        mfcc_feat_scale = mfcc_feat / np.linalg.norm(mfcc_feat)
        mfcc_feat_scale = mfcc_feat_scale[np.newaxis, :]
        print(mfcc_feat_scale.shape)
        # result_array=(mfcc_feat-np.min(mfcc_feat))/np.ptp(mfcc_feat)

        model = tensorflow.keras.models.load_model('./model')
        predictions = model.predict(mfcc_feat_scale)
        print(predictions)
        into_sad_prob = predictions[0][0]
        into_angry_prob = predictions[0][1]
        into_happy_prob = predictions[0][2]
        into_neutral_prob = predictions[0][3]
        table_name = 'transaction_table'
        data = {
            'session_id': session_id,
            'seq': seq,
            'into_sad_prob': str(into_sad_prob),
            'into_angry_prob': str(into_angry_prob),
            'into_happy_prob': str(into_happy_prob),
            'into_neutral_prob': str(into_neutral_prob)
        }
        r_data = {'session_id': session_id, 'seq': seq}
        connection = get_connection()
        row, number_rows = read_data(table_name, r_data, connection)
        if number_rows == 0:
            connection = insert_data(table_name, data, connection)
        else:
            condition = {'session_id': session_id, 'seq': seq}
            connection = update_data(table_name, data, condition, connection)
        return str(1)
    else:
        return str(0)
def handle_senti_score_request():
    session_id = request.json['session_id']
    seq = request.json['seq']
    text_senti_score = request.json['sentiment_score']
    again = request.json['again']
    # upadte if record exists
    table_name = 'transaction_table'
    data = {
        'session_id': session_id,
        'seq': seq,
        'text_senti_score': text_senti_score
    }
    connection = get_connection()
    if again == '1':
        condition = {'session_id': session_id, 'seq': seq}
        connection = update_data(table_name, data, condition, connection)
    elif again == '0':
        connection = insert_data(table_name, data, connection)
    close_connection(connection)
    return str(1)
def handle_request():
    api_result = json.loads(request.form.get('data'))
    seq = api_result["seq"]
    device_id = api_result["device_id"]
    session_id = api_result["session_id"]
    imagefile = request.files['image']
    filename = werkzeug.utils.secure_filename(imagefile.filename)
    imagefile.save(filename)
    with open(filename, 'rb') as f:
        data = f.read()
    _url = 'https://westus2.api.cognitive.microsoft.com/face/v1.0/detect'
    _key = 'bc027dc227484433a77d7b613807d230'  #Here you have to paste your primary key
    headers = dict()
    headers['Ocp-Apim-Subscription-Key'] = _key
    headers['Content-Type'] = 'application/octet-stream'

    json_ = None
    params = {
        'returnFaceId':
        'true',
        'returnFaceLandmarks':
        'false',
        'returnFaceAttributes':
        'age,gender,headPose,smile,facialHair,glasses,emotion,hair,makeup,occlusion,accessories,blur,exposure,noise',
    }
    result = processRequest(json_, data, headers, params, _url)
    connection = get_connection()
    if result == []:
        date_time = datetime.datetime.now()
        data = {
            'date': date_time,
            'session_id': session_id,
            'seq': seq,
            'device_id': device_id,
            'face_smile': 0,
            'face_anger': 0,
            'face_contempt': 0,
            'face_disgust': 0,
            'face_fear': 0,
            'face_happiness': 0,
            'face_neutral': 0,
            'face_sadness': 0,
            'face_surprise': 0
        }
        table_name = 'transaction_table'
        condition = {'session_id': session_id, 'seq': seq}
        connection = update_data(table_name, data, condition, connection)
        close_connection(connection)
        return str(4)
    elif result is None:
        date_time = datetime.datetime.now()
        data = {
            'date': date_time,
            'session_id': session_id,
            'seq': seq,
            'device_id': device_id,
            'face_smile': 0,
            'face_anger': 0,
            'face_contempt': 0,
            'face_disgust': 0,
            'face_fear': 0,
            'face_happiness': 0,
            'face_neutral': 0,
            'face_sadness': 0,
            'face_surprise': 0
        }
        table_name = 'transaction_table'
        condition = {'session_id': session_id, 'seq': seq}
        connection = update_data(table_name, data, condition, connection)
        close_connection(connection)
        return str(5)
    elif result[0]['faceAttributes'] is None:
        date_time = datetime.datetime.now()
        data = {
            'date': date_time,
            'session_id': session_id,
            'seq': seq,
            'device_id': device_id,
            'face_smile': 0,
            'face_anger': 0,
            'face_contempt': 0,
            'face_disgust': 0,
            'face_fear': 0,
            'face_happiness': 0,
            'face_neutral': 0,
            'face_sadness': 0,
            'face_surprise': 0
        }
        table_name = 'transaction_table'
        condition = {'session_id': session_id, 'seq': seq}
        connection = update_data(table_name, data, condition, connection)
        close_connection(connection)
        return str(6)

    firstface_dic = result[0]
    faceAttributes_dic = firstface_dic['faceAttributes']
    smile = faceAttributes_dic['smile']
    #gender = faceAttributes_dic['gender']
    anger = faceAttributes_dic['emotion']['anger']
    contempt = faceAttributes_dic['emotion']['contempt']
    disgust = faceAttributes_dic['emotion']['disgust']
    fear = faceAttributes_dic['emotion']['fear']
    happiness = faceAttributes_dic['emotion']['happiness']
    neutral = faceAttributes_dic['emotion']['neutral']
    sadness = faceAttributes_dic['emotion']['sadness']
    surprise = faceAttributes_dic['emotion']['surprise']
    connection = get_connection()
    date_time = datetime.datetime.now()
    data = {
        'date': date_time,
        'session_id': session_id,
        'seq': seq,
        'device_id': device_id,
        'face_smile': smile,
        'face_anger': anger,
        'face_contempt': contempt,
        'face_disgust': disgust,
        'face_fear': fear,
        'face_happiness': happiness,
        'face_neutral': neutral,
        'face_sadness': sadness,
        'face_surprise': surprise
    }
    table_name = 'transaction_table'
    condition = {'session_id': session_id, 'seq': seq}
    connection = update_data(table_name, data, condition, connection)
    close_connection(connection)
    return str(1)