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  • 毕业设计 python opencv实现车牌识别 颜色判断

    主要代码参考https://blog.csdn.net/wzh191920/article/details/79589506

    GitHub:https://github.com/yinghualuowu

    答辩通过了,补完~

    该部分代码还包括缩小边界

    def img_color(card_imgs):
        colors = []
        for card_index, card_img in enumerate(card_imgs):
    
            green = yello = blue = black = white = 0
            card_img_hsv = cv2.cvtColor(card_img, cv2.COLOR_BGR2HSV)
            # 有转换失败的可能,原因来自于上面矫正矩形出错
            if card_img_hsv is None:
                continue
            row_num, col_num = card_img_hsv.shape[:2]
            card_img_count = row_num * col_num
    
            for i in range(row_num):
                for j in range(col_num):
                    H = card_img_hsv.item(i, j, 0)
                    S = card_img_hsv.item(i, j, 1)
                    V = card_img_hsv.item(i, j, 2)
                    if 11 < H <= 34 and S > 34:
                        yello += 1
                    elif 35 < H <= 99 and S > 34:
                        green += 1
                    elif 99 < H <= 124 and S > 34:
                        blue += 1
    
                    if 0 < H < 180 and 0 < S < 255 and 0 < V < 46:
                        black += 1
                    elif 0 < H < 180 and 0 < S < 43 and 221 < V < 225:
                        white += 1
            color = "no"
    
            limit1 = limit2 = 0
            if yello * 2 >= card_img_count:
                color = "yello"
                limit1 = 11
                limit2 = 34  # 有的图片有色偏偏绿
            elif green * 2 >= card_img_count:
                color = "green"
                limit1 = 35
                limit2 = 99
            elif blue * 2 >= card_img_count:
                color = "blue"
                limit1 = 100
                limit2 = 124  # 有的图片有色偏偏紫
            elif black + white >= card_img_count * 0.7:
                color = "bw"
            colors.append(color)
            card_imgs[card_index] = card_img
    
    
            if limit1 == 0:
                continue
            xl, xr, yh, yl = accurate_place(card_img_hsv, limit1, limit2, color)
            if yl == yh and xl == xr:
                continue
            need_accurate = False
            if yl >= yh:
                yl = 0
                yh = row_num
                need_accurate = True
            if xl >= xr:
                xl = 0
                xr = col_num
                need_accurate = True
    
            if color =="green":
                card_imgs[card_index] = card_img
            else:
                card_imgs[card_index] = card_img[yl:yh, xl:xr] if color != "green" or yl < (yh - yl) // 4 else card_img[
                                                                                                                yl - (
                                                                                                                            yh - yl) // 4:yh,
                                                                                                                xl:xr]
    
            if need_accurate:
                card_img = card_imgs[card_index]
                card_img_hsv = cv2.cvtColor(card_img, cv2.COLOR_BGR2HSV)
                xl, xr, yh, yl = accurate_place(card_img_hsv, limit1, limit2, color)
                if yl == yh and xl == xr:
                    continue
                if yl >= yh:
                    yl = 0
                    yh = row_num
                if xl >= xr:
                    xl = 0
                    xr = col_num
            if color =="green":
                card_imgs[card_index] = card_img
            else:
                card_imgs[card_index] = card_img[yl:yh, xl:xr] if color != "green" or yl < (yh - yl) // 4 else card_img[
                                                                                                                yl - (
                                                                                                                            yh - yl) // 4:yh,
                                                                                                                xl:xr]
    
        return  colors,card_imgs

    accrate_place部分

    def accurate_place(card_img_hsv, limit1, limit2, color):
        row_num, col_num = card_img_hsv.shape[:2]
        xl = col_num
        xr = 0
        yh = 0
        yl = row_num
        row_num_limit = 21
        col_num_limit = col_num * 0.8 if color != "green" else col_num * 0.5  # 绿色有渐变
        for i in range(row_num):
            count = 0
            for j in range(col_num):
                H = card_img_hsv.item(i, j, 0)
                S = card_img_hsv.item(i, j, 1)
                V = card_img_hsv.item(i, j, 2)
                if limit1 < H <= limit2 and 34 < S and 46 < V:
                    count += 1
            if count > col_num_limit:
                if yl > i:
                    yl = i
                if yh < i:
                    yh = i
        for j in range(col_num):
            count = 0
            for i in range(row_num):
                H = card_img_hsv.item(i, j, 0)
                S = card_img_hsv.item(i, j, 1)
                V = card_img_hsv.item(i, j, 2)
                if limit1 < H <= limit2 and 34 < S and 46 < V:
                    count += 1
            if count > row_num - row_num_limit:
                if xl > j:
                    xl = j
                if xr < j:
                    xr = j
        return xl, xr, yh, yl
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  • 原文地址:https://www.cnblogs.com/yinghualuowu/p/9185382.html
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