Exemple #1
0
def auto_lane(img):
    polyfit = Polyfit()
    img = cv2.resize(img,dsize=(320,180))
    lower_black = np.array([0,0,0])
    upper_black = np.array([180,255,70])
    frame = warp(img)
    cv2.imshow('frame',frame)
    hsv = cv2.cvtColor(frame, cv2.COLOR_BGR2HSV)
    mask = cv2.inRange(hsv, lower_black, upper_black)
    cv2.imwrite('./mask.jpg',mask)
    cv2.imshow('frame:',mask)
    cv2.waitKey(1)
    
    # frame = combined_threshold(frame)
    try:        
        left_fit, right_fit, vars = polyfit.poly_fit_skip(mask)
        if left_fit =='None'  and right_fit == 'None':
            result,offset,Radius = img,0,10000
            cv2.imshow('re', cv2.resize(img, dsize=(640, 320)))
            cv2.waitKey(1)
        elif left_fit !='None' and right_fit == 'None' or left_fit !='None' and right_fit != 'None' :
            result,offset,Radius = draw(img, mask, left_fit, right_fit,para = 277,meter = 30)
            cv2.imshow('re',cv2.resize(result,dsize=(640,320)))
            cv2.waitKey(1)            
        else:
            print '-----1----unexcept error--------1----'
            result,offset,Radius = img,0,10000

    except:
        print '---------unexcept error------------'
        result,offset,Radius = img,0,10000
        
    return result,offset,Radius
Exemple #2
0
def predict(video_path):
    polyfit = Polyfit()
    with tf.Session() as sess:
        sess.run(tf.global_variables_initializer())
        loader = tf.train.import_meta_graph(
            './model_test/lane-conv--490--299.meta')
        loader.restore(sess, './model_test/lane-conv--490--299')
        y = tf.get_collection('pred_network')[0]
        graph = tf.get_default_graph()
        input_x = graph.get_operation_by_name('x_input').outputs[0]
        keep_prob = graph.get_operation_by_name('prob').outputs[0]
        cap = cv2.VideoCapture(video_path)
        ret, frame = cap.read()
        while ret:
            ret, frame = cap.read()
            # cv2.imshow("img",frame)
            img_arr = cv2.resize(frame, dsize=(107, 60))
            img_arr = cv2.cvtColor(img_arr, cv2.COLOR_BGR2GRAY)
            imgarr = np.reshape(img_arr, newshape=[1, 60, 107, 1])
            predict = sess.run(y, feed_dict={
                input_x: imgarr,
                keep_prob: 1.0
            })[0]
            predict = np.uint8(np.where(predict == 0, 0, 255))
            predict = cv2.resize(predict, dsize=(320, 180))
            warped = warp(predict)
            left_fit, right_fit, vars = polyfit.poly_fit_slide(warped)
            print(left_fit)
            result, offset, Radius, k_error = draw(
                cv2.resize(frame, dsize=(320, 180)), warped, left_fit,
                right_fit)
            cv2.imshow('warped', warped)
            cv2.imshow('res', result)
            cv2.waitKey(1)
def draw_lane(img_arr):
    polyfit = Polyfit()
    combined_output = combined_threshold(img_arr)
    warped = warp(combined_output)
    left_fit, right_fit, vars = polyfit.poly_fit_skip(warped)
    # print(left_fit,right_fit)
    result = draw(img_arr, warped, left_fit, right_fit)
    return result,left_fit,right_fit
Exemple #4
0
def predict(video_path):
    polyfit = Polyfit()
    with tf.Session() as sess:
        sess.run(tf.global_variables_initializer())
        loader = tf.train.import_meta_graph(
            './model_test/lane-conv--490--299.meta')
        loader.restore(sess, './model_test/lane-conv--490--299')
        y = tf.get_collection('pred_network')[0]
        graph = tf.get_default_graph()
        input_x = graph.get_operation_by_name('x_input').outputs[0]
        keep_prob = graph.get_operation_by_name('prob').outputs[0]
        cap = cv2.VideoCapture(video_path)
        ret, frame = cap.read()
        n = 0
        while ret:
            ret, frame = cap.read()
            # cv2.imshow("img",frame)
            img_arr = cv2.resize(frame, dsize=(107, 60))
            img_arr = cv2.cvtColor(img_arr, cv2.COLOR_BGR2GRAY)
            imgarr = np.reshape(img_arr, newshape=[1, 60, 107, 1])
            predict = sess.run(y, feed_dict={
                input_x: imgarr,
                keep_prob: 1.0
            })[0]
            predict = np.uint8(np.where(predict == 0, 0, 255))
            predict = cv2.resize(predict, dsize=(320, 180))
            cv2.imwrite("./predict/" + str(n) + '.jpg', predict)
            n = n + 1
            cv2.imshow('pre', predict)
            cv2.waitKey(1)
def auto_lane(img, n):
    polyfit = Polyfit()
    img = cv2.resize(img, dsize=(320, 180))

    frame = warp(img)
    cv2.imshow('warped', frame)

    # mask_flag = hsv(frame)
    # dec_flag = dec_lane(mask_flag)
    # mask = sobel(frame)
    # corner_det(mask,frame)
    mask = hsv(frame)
    print(mask[2])
    cv2.waitKey(1)
    #mask = cv2.GaussianBlur(frame,(5,5),0)
    kernel = cv2.getStructuringElement(cv2.MORPH_RECT, (2, 2))
    mask = cv2.erode(mask, kernel)
    mask = cv2.dilate(mask, kernel)
    cv2.imwrite('./image1/' + str(n) + '.jpg', hsv(img))

    cv2.imwrite('./mask.jpg', mask)
    cv2.imshow('frame:', mask)
    cv2.waitKey(1)

    # frame = combined_threshold(frame)
    try:
        left_fit, right_fit, vars = polyfit.poly_fit_skip(mask)
        if left_fit == 'None' and right_fit == 'None':
            result, offset, Radius = img, 'None', 10000
            cv2.imshow('re', cv2.resize(img, dsize=(640, 320)))
            cv2.waitKey(1)
        elif left_fit != 'None' and right_fit == 'None' or left_fit != 'None' and right_fit != 'None':
            result, offset, Radius = draw(img, mask, left_fit, right_fit)
            cv2.imshow('re', cv2.resize(result, dsize=(640, 320)))
            cv2.waitKey(1)
        else:
            result, offset, Radius = img, 0, 10000

    except:
        result, offset, Radius = img, 0, 10000
    '''offset --------------------'''
    if offset == 'None':
        offset = 'None'
    else:
        offset = offset + 24.00
    return result, offset, Radius
Exemple #6
0
def auto_lane(img):
    polyfit = Polyfit()
    img = cv2.resize(img,dsize=(320,180))
    
    frame = warp(img)
    cv2.imshow('warped',frame)
    
    mask_flag = hsv(frame)
    dec_flag = dec_lane(mask_flag)
    print 'dec_lane flag = ',dec_flag    
    mask = sobel(frame)
    #mask = hsv(frame)
    #mask = canny(frame,50,150)
    #mask = cv2.GaussianBlur(frame,(5,5),0)    
    kernel = cv2.getStructuringElement(cv2.MORPH_RECT,(2,2))
    mask = cv2.erode(mask,kernel)
    mask = cv2.dilate(mask,kernel)           
    cv2.imshow('mask',mask)
    cv2.waitKey(1)
    
    # frame = combined_threshold(frame)
    try:        
        left_fit, right_fit, vars = polyfit.poly_fit_skip(mask)
        if left_fit =='None'  and right_fit == 'None':
            result,offset,Radius = img,'None',10000
            cv2.imshow('re', cv2.resize(img, dsize=(640, 320)))
            cv2.waitKey(1)
        elif left_fit !='None' and right_fit == 'None' or left_fit !='None' and right_fit != 'None' :
            result,offset,Radius = draw(img, mask, left_fit, right_fit)
            cv2.imshow('re',cv2.resize(result,dsize=(640,320)))
            cv2.waitKey(1)            
        else:
            print '-----1----unexcept error--------1----'
            result,offset,Radius = img,0,10000

    except:
        print '---------unexcept error------------'
        result,offset,Radius = img,0,10000
    '''offset --------------------'''
    if  offset == 'None':
        offset = 'None'
    else:
        offset = offset 
    return result,offset,Radius
def auto_lane(img):
    polyfit = Polyfit()
    img = cv2.resize(img, dsize=(320, 180))
    cv2.imwrite('./resize.jpg', img)
    warped = warp(img)
    mask = abs_threshold(warped)
    # mask = hsv(warped)
    # frame = combined_threshold(frame)
    left_fit, right_fit, vars = polyfit.poly_fit_skip(mask)
    if left_fit == 'None' or right_fit == 'None':
        result, offset, Radius = None, None, None
        cv2.imshow('re', cv2.resize(img, dsize=(853, 480)))
        cv2.waitKey(0)
        return result, offset, Radius
    else:
        result, offset, Radius = draw(img, mask, left_fit, right_fit)
        cv2.imshow('re', cv2.resize(result, dsize=(853, 480)))
        cv2.waitKey(0)
    cv2.imwrite("./res.jpg", result)
    return result, offset, Radius
def auto_lane(img):
    polyfit = Polyfit()
    img = cv2.resize(img, dsize=(320, 180))
    lower_black = np.array([0, 0, 0])
    upper_black = np.array([180, 255, 70])
    frame = warp(img)
    hsv = cv2.cvtColor(frame, cv2.COLOR_BGR2HSV)
    mask = cv2.inRange(hsv, lower_black, upper_black)
    cv2.imshow('mask', mask)
    # frame = combined_threshold(frame)
    left_fit, right_fit, vars = polyfit.poly_fit_skip(mask)
    if left_fit == 'None' or right_fit == 'None':
        result, offset, Radius = None, None, None
        cv2.imshow('re', cv2.resize(img, dsize=(853, 480)))
        cv2.waitKey(0)
        return result, offset, Radius
    else:
        result, offset, Radius = draw(img, mask, left_fit, right_fit)
        cv2.imshow('re', cv2.resize(result, dsize=(853, 480)))
        cv2.waitKey(0)
    return result, offset, Radius
def auto_lane(img):
    polyfit = Polyfit()
    img = cv2.resize(img, dsize=(320, 180))

    #light recongise
    GreenLight, RedLight, SpeedLimit, HireSign = recongise(img)
    GreenLight = main(img)
    frame = warp(img)
    mask = hsv(frame)
    # dec_flag = dec_lane(mask)

    #mask = canny(frame,50,150)
    #mask = cv2.GaussianBlur(frame,(5,5),0)
    kernel = cv2.getStructuringElement(cv2.MORPH_RECT, (2, 2))
    mask = cv2.erode(mask, kernel)
    mask = cv2.dilate(mask, kernel)
    cv2.imshow('mask', mask)
    cv2.waitKey(1)
    try:
        left_fit, right_fit, vars = polyfit.poly_fit_skip(mask)
        if left_fit == 'None' and right_fit == 'None':
            result, offset, Radius, k_error = img, 'None', 10000, 0


##            cv2.imshow('re', cv2.resize(img, dsize=(640, 320)))
##            cv2.waitKey(1)
        elif left_fit != 'None' and right_fit == 'None' or left_fit != 'None' and right_fit != 'None':
            result, offset, Radius, k_error = draw(img, mask, left_fit,
                                                   right_fit)

            ##            cv2.imshow('re',cv2.resize(result,dsize=(640,320)))
            cv2.waitKey(1)
        else:
            result, offset, Radius, k_error = img, 0, 10000, 0

    except:
        result, offset, Radius, k_error = img, 0, 10000, 0
    '''offset --------------------'''
    '''--------------------------lanetype--------------------------'''
    '''zhixian:1..wandao:2...zhijiaowan: 3'''
    if offset == 'None':
        offset = 'None'
    else:
        offset = offset
    if abs(k_error) < 0.06:
        cur_mode = 1  #wandao
    elif abs(k_error) >= 0.06:
        cur_mode = 2  #zhidao
    elif k_error == 'None':
        cur_mode = last_mode  #keeping
    '''cornerflage'''
    corner_flag = corner_det(mask, img)
    if corner_flag == 0:
        pass
    if corner_flag == 1:
        cur_mode = 3
    last_mode = cur_mode
    Lane_type = cur_mode
    '''-----------SpeedLimit----------'''
    SpeedLimit = 0
    '''-----------RedLight------------'''
    RedLight = 0
    '''-----------GreenLight----------'''
    GreenLight = 0
    '''-----------HireSign------------'''
    HireSign = 0
    '''-----------StopSign------------'''
    StopSign = 0
    cv2.imshow('result', result)
    cv2.waitKey(1)
    return result, offset, Radius, Lane_type, SpeedLimit, RedLight, GreenLight, HireSign, StopSign
    '''-----------SpeedLimit----------'''
    SpeedLimit = 0
    '''-----------RedLight------------'''
    RedLight = 0
    '''-----------GreenLight----------'''
    GreenLight = 0
    '''-----------HireSign------------'''
    HireSign = 0
    '''-----------StopSign------------'''
    StopSign = 0
    cv2.imshow('result', result)
    cv2.waitKey(1)
    return result, offset, Radius, Lane_type, SpeedLimit, RedLight, GreenLight, HireSign, StopSign

if __name__ == "__main__":
    polyfit = Polyfit()
    original_video = './test4.avi'
    cap = cv2.VideoCapture(original_video)
    n = 0
    while (1):
        n = n + 1
        ret, img = cap.read()
        #cv2.imwrite('./tst3/' + str(n) + '.jpg',img)
        start = time.time()
        ##         cv2.imshow('01',img)
        ##         cv2.waitKey(1)
        result, offset, Radius, _, _, _, _, _, _ = auto_lane(img)
        print('Time per px :', time.time() - start)
        print(offset, Radius)
'''
    polyfit = Polyfit()
Exemple #11
0
 # print(data['x'].shape,data['y'].shape)
 train(3000)
 # # Single image process
 #     filename = selectfile()
 #     img_arr  = cv2.imread(filename)
 #     start = time.time()
 #     result = prediction(img_arr)
 #     print('time:',time.time()-start)
 #     cv2.imshow('result',result)
 #     cv2.waitKey(0)    # Video process
 #     VideoProcee(input_path='./test5.avi',output_path='./lane_detect.avi',timeF=1,fps=30)
 #     train()
 #     prediction()
 # data_read()
 sess = tf.Session()
 polyfit = Polyfit()
 sess.run(tf.global_variables_initializer())
 loader = tf.train.import_meta_graph('./model_test/lane-conv---99.meta')
 loader.restore(sess, './model_test/lane-conv---99')
 y = tf.get_collection('pred_network')[0]
 graph = tf.get_default_graph()
 input_x = graph.get_operation_by_name('x_input').outputs[0]
 keep_prob = graph.get_operation_by_name('prob').outputs[0]
 cap = cv2.VideoCapture('./test5.avi')
 ret, frame = cap.read()
 while ret:
     s = time.time()
     ret, frame = cap.read()
     imgarr = cv2.resize(frame, dsize=(107, 60))
     predict = cnn_lane(sess, imgarr)
     predict = np.uint8(np.where(predict == 0, 0, 255))
Exemple #12
0
def auto_lane(img):
    global cur_mode
    global last_mode
    global counter
    start = time.time()
    img = cv2.resize(img, (320, 180))
    GreenLight, RedLight, SpeedLimit, HireSign = recongise(img)
    ##    GreenLight = circle_dec(img)
    polyfit = Polyfit()
    #light recongise
    ##    GreenLight = recongise_light(img)
    frame = warp(img)
    mask = hsv(frame)
    cv2.imshow('warpedmask', frame)
    ##    mask = canny(frame,50,150)
    zebracrossing = dec_lane(mask)
    print '......................0.0.0.13212', zebracrossing

    #mask = cv2.GaussianBlur(frame,(5,5),0)
    ##    kernel = cv2.getStructuringElement(cv2.MORPH_RECT,(2,2))
    ##    mask = cv2.erode(mask,kernel)
    ##    mask = cv2.dilate(mask,kernel)
    ##    cv2.imshow('mask',mask)
    cv2.waitKey(1)
    try:
        left_fit, right_fit, vars = polyfit.poly_fit_slide(mask)
        print '---------------------left,right', left_fit, right_fit

        if left_fit == 'None' and right_fit == 'None':
            print '11111circle'
            result, offset, Radius, k_error = img, 'None', 10000, 'None'
##            cv2.imshow('re', cv2.resize(img, dsize=(640, 320)))
##            cv2.waitKey(1)
        else:
            print '2222circle'
            result, offset, Radius, k_error = draw(img, mask, left_fit,
                                                   right_fit)


##            cv2.imshow('re',cv2.resize(result,dsize=(640,320)))
##            cv2.waitKey(1)
    except:
        print '---------unexcept error------------'
        result, offset, Radius, k_error = img, 0, 10000, 'None'
    '''--------------------------lanetype--------------------------'''
    '''zhixian:1..wandao:2...zhijiaowan: 3'''
    print "........kerror:...", k_error
    if k_error == 'None':
        cur_mode = last_mode  #keeping
    else:
        if abs(k_error) < 0.06:
            cur_mode = 1
        if abs(k_error) >= 0.06:
            cur_mode = 2
    '''cornerflage'''
    print '--------', cur_mode, '------', last_mode
    corner_flag = corner_det(mask, img)
    if corner_flag == 0:
        pass
    if corner_flag == 1:
        cur_mode = 3
    last_mode = cur_mode
    Lane_type = cur_mode
    '''-----------SpeedLimit----------'''
    SpeedLimit = 0
    '''-----------RedLight------------'''
    GreenLight = 0
    '''-----------HireSign------------'''
    '''-----------StopSign------------'''
    StopSign = 0
    print 'Corner .....', Lane_type

    cv2.imshow('result', result)
    cv2.waitKey(1)

    return result, offset, Radius, Lane_type, SpeedLimit, RedLight, GreenLight, HireSign, StopSign, zebracrossing
Exemple #13
0
    return result, left_fit, right_fit


if __name__ == "__main__":

    # polyfit = Polyfit()
    # original_video = './video.mp4'
    # cap = cv2.VideoCapture(original_video)
    # n = 0
    # while (1):
    #     n = n+1
    #     ret,img = cap.read()
    #     img = cv2.resize(img,dsize=(320,180))
    #     frame = warp(img)
    #     cv2.imshow('warp',frame)
    #     frame = combined_threshold(frame)
    #     left_fit, right_fit, vars = polyfit.poly_fit_skip(frame)
    #     result = draw(img, frame, left_fit, right_fit)
    #     cv2.imshow('re', result)
    #     cv2.waitKey(1)

    #1280  720

    polyfit = Polyfit()
    img = cv2.imread('./101.jpg')
    frame = warp(img)
    frame = combined_threshold(frame)
    left_fit, right_fit, vars = polyfit.poly_fit_skip(frame)
    result = draw(img, frame, left_fit, right_fit)
    cv2.imshow('re', result)
    cv2.waitKey(0)