import cv2 import numpy as np from pallete_schema import PalleteSchema class ComparisonComparison: def __init__ (self) : red = [0, 10, 200] green = [5, 250, 5] blue = [240, 0, 20] comp_colors = [red, green, blue] pallete = PalleteSchema('./palletes/test_pallete.json') colors = self.get_colors(pallete.colors) for cc in comp_colors : ccbgr = self.convert_color(cc, 'RGB', 'BGR') closest = self.closest(colors, ccbgr) print(f'{closest} for {ccbgr}') def get_colors (self, pallete) : colors = [] for color in pallete : colors.append(color['color']) return colors def convert_color (self, color, color_space_a, color_space_b) : pixel = np.zeros([1, 1, 3], dtype=np.uint8) if color_space_a == 'RGB' : pixel = cv2.cvtColor(pixel, cv2.COLOR_BGR2RGB) elif color_space_a == 'LAB' : pixel = cv2.cvtColor(pixel, cv2.COLOR_BGR2LAB) elif color_space_a == 'HSV' : pixel = cv2.cvtColor(pixel, cv2.COLOR_BGR2HSV) #default is BGR pixel[:] = color if color_space_a == 'RGB' and color_space_b == 'BGR' : b = cv2.COLOR_RGB2BGR elif color_space_a == 'BGR' and color_space_b == 'RGB' : b = cv2.COLOR_BGR2RGB elif color_space_a == 'RGB' and color_space_b == 'LAB' : b = cv2.COLOR_RGB2LAB elif color_space_a == 'LAB' and color_space_b == 'RGB' : b = cv2.COLOR_LAB2RGB elif color_space_a == 'BGR' and color_space_b == 'LAB' : b = cv2.COLOR_BGR2LAB elif color_space_a == 'LAB' and color_space_b == 'BGR' : b = cv2.COLOR_LAB2BGR elif color_space_a == 'HSV' and color_space_b == 'LAB' : b = cv2.COLOR_HSV2LAB elif color_space_a == 'LAB' and color_space_b == 'HSV' : b = cv2.COLOR_LAB2HSV elif color_space_a == 'RGB' and color_space_b == 'HSV' : b = cv2.COLOR_RGB2HSV elif color_space_a == 'HSV' and color_space_b == 'RGB' : b = cv2.COLOR_HSV2RGB elif color_space_a == 'BGR' and color_space_b == 'HSV' : b = cv2.COLOR_BGRHSV elif color_space_a == 'HSV' and color_space_b == 'BGR' : b = cv2.COLOR_HSV2BGR cvt = cv2.cvtColor(pixel, b) return cvt[0, 0] def closest(self, colors, color): colors = np.array(colors) color = np.array(color) distances = np.sqrt(np.sum((colors - color) ** 2, axis=1)) index_of_smallest = np.where(distances == np.amin(distances)) smallest_distance = colors[index_of_smallest] return smallest_distance if __name__ == "__main__": ComparisonComparison()