import warnings import numpy as np import cv2 from shapely.geometry import Polygon import pyclipper from concern.config import State from .data_process import DataProcess class MakeCenterDistanceMap(DataProcess): r''' Making the border map from detection data with ICDAR format. Typically following the process of class `MakeICDARData`. ''' expansion_ratio = State(default=0.1) def __init__(self, cmd={}, *args, **kwargs): self.load_all(cmd=cmd, **kwargs) warnings.simplefilter("ignore") def process(self, data, *args, **kwargs): r''' required keys: image. lines: Instace of `TextLines`, which is defined in data/text_lines.py adding keys: distance_map ''' image = data['image'] lines = data['lines'] h, w = image.shape[:2] canvas = np.zeros(image.shape[:2], dtype=np.float32) mask = np.zeros(image.shape[:2], dtype=np.float32) for _, quad in lines: padded = self.expand_quad(quad) center_x = padded[:, 0].mean() center_y = padded[:, 1].mean() index_x, index_y = np.meshgrid(np.arange(w), np.arange(h)) self.render_distance_map(canvas, center_x, center_y, index_x, index_y) self.render_constant(mask, quad, 1) canvas = canvas * (self.thresh_max - self.thresh_min) + self.thresh_min data['thresh_map'] = canvas return data def expand_quad(self, polygon): polygon = np.array(polygon) assert polygon.ndim == 2 assert polygon.shape[1] == 2 polygon_shape = Polygon(polygon) distance = polygon_shape.area * \ (1 - np.power(self.expansion_ratio, 2)) / polygon_shape.length subject = [tuple(l) for l in polygon] padding = pyclipper.PyclipperOffset() padding.AddPath(subject, pyclipper.JT_ROUND, pyclipper.ET_CLOSEDPOLYGON) padded_polygon = np.array(padding.Execute(distance)[0]) return padded_polygon cv2.fillPoly(mask, [padded_polygon.astype(np.int32)], 1.0) def distance(self, xs, ys, point): ''' compute the distance from point to a line ys: coordinates in the first axis xs: coordinates in the second axis point_1, point_2: (x, y), the end of the line ''' height, width = xs.shape[:2] square_distance_1 = np.square( xs - point_1[0]) + np.square(ys - point_1[1]) square_distance_2 = np.square( xs - point_2[0]) + np.square(ys - point_2[1]) square_distance = np.square( point_1[0] - point_2[0]) + np.square(point_1[1] - point_2[1]) cosin = (square_distance - square_distance_1 - square_distance_2) / \ (2 * np.sqrt(square_distance_1 * square_distance_2)) square_sin = 1 - np.square(cosin) square_sin = np.nan_to_num(square_sin) result = np.sqrt(square_distance_1 * square_distance_2 * square_sin / square_distance) result[cosin < 0] = np.sqrt(np.fmin( square_distance_1, square_distance_2))[cosin < 0] # self.extend_line(point_1, point_2, result) return result def extend_line(self, point_1, point_2, result): ex_point_1 = (int(round(point_1[0] + (point_1[0] - point_2[0]) * (1 + self.shrink_ratio))), int(round(point_1[1] + (point_1[1] - point_2[1]) * (1 + self.shrink_ratio)))) cv2.line(result, tuple(ex_point_1), tuple(point_1), 4096.0, 1, lineType=cv2.LINE_AA, shift=0) ex_point_2 = (int(round(point_2[0] + (point_2[0] - point_1[0]) * (1 + self.shrink_ratio))), int(round(point_2[1] + (point_2[1] - point_1[1]) * (1 + self.shrink_ratio)))) cv2.line(result, tuple(ex_point_2), tuple(point_2), 4096.0, 1, lineType=cv2.LINE_AA, shift=0) return ex_point_1, ex_point_2