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- """
- EXTENDED_RRT_2D
- @author: huiming zhou
- """
- import os
- import sys
- import math
- import numpy as np
- import matplotlib.pyplot as plt
- import matplotlib.patches as patches
- sys.path.append(os.path.dirname(os.path.abspath(__file__)) +
- "/../../Sampling-based Planning/")
- from rrt_2D import env
- from rrt_2D import plotting
- from rrt_2D import utils
- class Node:
- def __init__(self, n):
- self.x = n[0]
- self.y = n[1]
- self.parent = None
- class ExtendedRrt:
- def __init__(self, s_start, s_goal, step_len, goal_sample_rate, waypoint_sample_rate, iter_max):
- self.s_start = Node(s_start)
- self.s_goal = Node(s_goal)
- self.step_len = step_len
- self.goal_sample_rate = goal_sample_rate
- self.waypoint_sample_rate = waypoint_sample_rate
- self.iter_max = iter_max
- self.vertex = [self.s_start]
- self.env = env.Env()
- self.plotting = plotting.Plotting(s_start, s_goal)
- self.utils = utils.Utils()
- self.fig, self.ax = plt.subplots()
- self.x_range = self.env.x_range
- self.y_range = self.env.y_range
- self.obs_circle = self.env.obs_circle
- self.obs_rectangle = self.env.obs_rectangle
- self.obs_boundary = self.env.obs_boundary
- self.path = []
- self.waypoint = []
- def planning(self):
- for i in range(self.iter_max):
- node_rand = self.generate_random_node(self.goal_sample_rate)
- node_near = self.nearest_neighbor(self.vertex, node_rand)
- node_new = self.new_state(node_near, node_rand)
- if node_new and not self.utils.is_collision(node_near, node_new):
- self.vertex.append(node_new)
- dist, _ = self.get_distance_and_angle(node_new, self.s_goal)
- if dist <= self.step_len:
- self.new_state(node_new, self.s_goal)
- path = self.extract_path(node_new)
- self.plot_grid("Extended_RRT")
- self.plot_visited()
- self.plot_path(path)
- self.path = path
- self.waypoint = self.extract_waypoint(node_new)
- self.fig.canvas.mpl_connect('button_press_event', self.on_press)
- plt.show()
- return
- return None
- def on_press(self, event):
- x, y = event.xdata, event.ydata
- if x < 0 or x > 50 or y < 0 or y > 30:
- print("Please choose right area!")
- else:
- x, y = int(x), int(y)
- print("Add circle obstacle at: x =", x, ",", "y =", y)
- self.obs_circle.append([x, y, 2])
- self.utils.update_obs(self.obs_circle, self.obs_boundary, self.obs_rectangle)
- path, waypoint = self.replanning()
- plt.cla()
- self.plot_grid("Extended_RRT")
- self.plot_path(self.path, color='blue')
- self.plot_visited()
- self.plot_path(path)
- self.path = path
- self.waypoint = waypoint
- self.fig.canvas.draw_idle()
- def replanning(self):
- self.vertex = [self.s_start]
- for i in range(self.iter_max):
- node_rand = self.generate_random_node_replanning(self.goal_sample_rate, self.waypoint_sample_rate)
- node_near = self.nearest_neighbor(self.vertex, node_rand)
- node_new = self.new_state(node_near, node_rand)
- if node_new and not self.utils.is_collision(node_near, node_new):
- self.vertex.append(node_new)
- dist, _ = self.get_distance_and_angle(node_new, self.s_goal)
- if dist <= self.step_len:
- self.new_state(node_new, self.s_goal)
- path = self.extract_path(node_new)
- waypoint = self.extract_waypoint(node_new)
- return path, waypoint
- return None
- def generate_random_node(self, goal_sample_rate):
- delta = self.utils.delta
- if np.random.random() > goal_sample_rate:
- return Node((np.random.uniform(self.x_range[0] + delta, self.x_range[1] - delta),
- np.random.uniform(self.y_range[0] + delta, self.y_range[1] - delta)))
- return self.s_goal
- def generate_random_node_replanning(self, goal_sample_rate, waypoint_sample_rate):
- delta = self.utils.delta
- p = np.random.random()
- if p < goal_sample_rate:
- return self.s_goal
- elif goal_sample_rate < p < goal_sample_rate + waypoint_sample_rate:
- return self.waypoint[np.random.randint(0, len(self.path) - 1)]
- else:
- return Node((np.random.uniform(self.x_range[0] + delta, self.x_range[1] - delta),
- np.random.uniform(self.y_range[0] + delta, self.y_range[1] - delta)))
- @staticmethod
- def nearest_neighbor(node_list, n):
- return node_list[int(np.argmin([math.hypot(nd.x - n.x, nd.y - n.y)
- for nd in node_list]))]
- def new_state(self, node_start, node_end):
- dist, theta = self.get_distance_and_angle(node_start, node_end)
- dist = min(self.step_len, dist)
- node_new = Node((node_start.x + dist * math.cos(theta),
- node_start.y + dist * math.sin(theta)))
- node_new.parent = node_start
- return node_new
- def extract_path(self, node_end):
- path = [(self.s_goal.x, self.s_goal.y)]
- node_now = node_end
- while node_now.parent is not None:
- node_now = node_now.parent
- path.append((node_now.x, node_now.y))
- return path
- def extract_waypoint(self, node_end):
- waypoint = [self.s_goal]
- node_now = node_end
- while node_now.parent is not None:
- node_now = node_now.parent
- waypoint.append(node_now)
- return waypoint
- @staticmethod
- def get_distance_and_angle(node_start, node_end):
- dx = node_end.x - node_start.x
- dy = node_end.y - node_start.y
- return math.hypot(dx, dy), math.atan2(dy, dx)
- def plot_grid(self, name):
- for (ox, oy, w, h) in self.obs_boundary:
- self.ax.add_patch(
- patches.Rectangle(
- (ox, oy), w, h,
- edgecolor='black',
- facecolor='black',
- fill=True
- )
- )
- for (ox, oy, w, h) in self.obs_rectangle:
- self.ax.add_patch(
- patches.Rectangle(
- (ox, oy), w, h,
- edgecolor='black',
- facecolor='gray',
- fill=True
- )
- )
- for (ox, oy, r) in self.obs_circle:
- self.ax.add_patch(
- patches.Circle(
- (ox, oy), r,
- edgecolor='black',
- facecolor='gray',
- fill=True
- )
- )
- plt.plot(self.s_start.x, self.s_start.y, "bs", linewidth=3)
- plt.plot(self.s_goal.x, self.s_goal.y, "gs", linewidth=3)
- plt.title(name)
- plt.axis("equal")
- def plot_visited(self):
- animation = True
- if animation:
- count = 0
- for node in self.vertex:
- count += 1
- if node.parent:
- plt.plot([node.parent.x, node.x], [node.parent.y, node.y], "-g")
- plt.gcf().canvas.mpl_connect('key_release_event',
- lambda event:
- [exit(0) if event.key == 'escape' else None])
- if count % 10 == 0:
- plt.pause(0.001)
- else:
- for node in self.vertex:
- if node.parent:
- plt.plot([node.parent.x, node.x], [node.parent.y, node.y], "-g")
- @staticmethod
- def plot_path(path, color='red'):
- plt.plot([x[0] for x in path], [x[1] for x in path], linewidth=2, color=color)
- plt.pause(0.01)
- def main():
- x_start = (2, 2) # Starting node
- x_goal = (49, 24) # Goal node
- errt = ExtendedRrt(x_start, x_goal, 0.5, 0.1, 0.6, 5000)
- errt.planning()
- if __name__ == '__main__':
- main()
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