mirror of
https://github.com/LmeSzinc/StarRailCopilot.git
synced 2024-11-27 02:27:12 +00:00
be00742c3c
- 修复处理夜间委托时, 出现递归调用的问题 - 增加红脸出击确认的功能 - 增加了透视识别错误图片保存的开关 - 修复了地图太小时, 透视识别报错的问题 - 修复了相机位于地图外时, 透视识别出错的问题 - 修复了离开退役时, 会连击的问题 - 修复了同时出现低心情和船坞已满弹窗时, 卡住的问题 - 更新了一键退役实装后的安全点击的位置 - 修复了换装滑动失败时, 卡住的问题 - 修复了关闭自动收获后, 出现委托完成的提示是, 进图卡住的问题 - 修复了, 无正在跑的委托时, 报错的问题
186 lines
5.4 KiB
Python
186 lines
5.4 KiB
Python
import numpy as np
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class Points:
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def __init__(self, points, config):
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if points is None:
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self._bool = False
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self.points = None
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else:
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self._bool = True
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self.points = np.array(points)
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if len(self.points.shape) == 1:
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self.points = np.array([self.points])
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self.config = config
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self.x, self.y = self.points.T
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def __str__(self):
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return str(self.points)
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def __iter__(self):
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return iter(self.points)
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def __getitem__(self, item):
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return self.points[item]
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def __len__(self):
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return len(self.points)
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def __bool__(self):
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return self._bool
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def link(self, point, is_horizontal=False):
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if is_horizontal:
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lines = [[y, np.pi/2] for y in self.y]
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return Lines(lines, is_horizontal=True, config=self.config)
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else:
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x, y = point
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theta = -np.arctan((self.x - x) / (self.y - y))
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rho = self.x * np.cos(theta) + self.y * np.sin(theta)
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lines = np.array([rho, theta]).T
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return Lines(lines, is_horizontal=False, config=self.config)
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class Lines:
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def __init__(self, lines, is_horizontal, config):
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if lines is None or len(lines) == 0:
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self._bool = False
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self.lines = None
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else:
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self._bool = True
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self.lines = np.array(lines)
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if len(self.lines.shape) == 1:
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self.lines = np.array([self.lines])
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self.rho, self.theta = self.lines.T
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self.is_horizontal = is_horizontal
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self.config = config
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def __str__(self):
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return str(self.lines)
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def __iter__(self):
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return iter(self.lines)
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def __getitem__(self, item):
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return Lines(self.lines[item], is_horizontal=self.is_horizontal, config=self.config)
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def __len__(self):
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if self:
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return len(self.lines)
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else:
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return 0
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def __bool__(self):
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return self._bool
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@property
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def sin(self):
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return np.sin(self.theta)
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@property
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def cos(self):
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return np.cos(self.theta)
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@property
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def mean(self):
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if not self:
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return None
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if self.is_horizontal:
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return np.mean(self.lines, axis=0)
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else:
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x = np.mean(self.mid)
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theta = np.mean(self.theta)
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rho = x * np.cos(theta) + self.config.MID_Y * np.sin(theta)
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return np.array((rho, theta))
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@property
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def mid(self):
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if not self:
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return np.array([])
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if self.is_horizontal:
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return self.rho
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else:
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return (self.rho - self.config.MID_Y * self.sin) / self.cos
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def get_x(self, y):
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return (self.rho - y * self.sin) / self.cos
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def get_y(self, x):
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return (self.rho - x * self.cos) / self.sin
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def add(self, other):
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if not other:
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return self
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if not self:
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return other
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lines = np.append(self.lines, other.lines, axis=0)
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return Lines(lines, is_horizontal=self.is_horizontal, config=self.config)
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def move(self, x, y):
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if not self:
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return self
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if self.is_horizontal:
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self.lines[:, 0] += y
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else:
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self.lines[:, 0] += x * self.cos + y * self.sin
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return Lines(self.lines, is_horizontal=self.is_horizontal, config=self.config)
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def sort(self):
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if not self:
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return self
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lines = self.lines[np.argsort(self.mid)]
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return Lines(lines, is_horizontal=self.is_horizontal, config=self.config)
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def group(self, threshold=3):
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if not self:
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return self
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lines = self.sort()
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prev = 0
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regrouped = []
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group = []
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for mid, line in zip(lines.mid, lines.lines):
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line = line.tolist()
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if mid - prev > threshold:
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if len(regrouped) == 0:
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if len(group) != 0:
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regrouped = [group]
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else:
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regrouped += [group]
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group = [line]
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else:
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group.append(line)
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prev = mid
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regrouped += [group]
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regrouped = np.vstack([Lines(r, is_horizontal=self.is_horizontal, config=self.config).mean for r in regrouped])
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return Lines(regrouped, is_horizontal=self.is_horizontal, config=self.config)
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def distance_to_point(self, point):
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x, y = point
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return self.rho - x * self.cos - y * self.sin
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@staticmethod
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def cross_two_lines(lines1, lines2):
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for rho1, sin1, cos1 in zip(lines1.rho, lines1.sin, lines1.cos):
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for rho2, sin2, cos2 in zip(lines2.rho, lines2.sin, lines2.cos):
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a = np.array([[cos1, sin1], [cos2, sin2]])
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b = np.array([rho1, rho2])
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yield np.linalg.solve(a, b)
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def cross(self, other):
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points = np.vstack(self.cross_two_lines(self, other))
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points = Points(points, config=self.config)
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return points
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def delete(self, other, threshold=3):
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if not self:
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return self
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other_mid = other.mid
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lines = []
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for mid, line in zip(self.mid, self.lines):
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if np.any(np.abs(other_mid - mid) < threshold):
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continue
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lines.append(line)
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return Lines(lines, is_horizontal=self.is_horizontal, config=self.config)
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