一文教你用python編寫Dijkstra算法進行機器人路徑規劃

前言

為瞭機器人在尋路的過程中避障並且找到最短距離,我們需要使用一些算法進行路徑規劃(Path Planning),常用的算法有Djikstra算法、A*算法等等,在github上有一個非常好的項目叫做PythonRobotics,其中給出瞭源代碼,參考代碼,可以對Djikstra算法有更深的瞭解。

一、算法原理

如圖所示,Dijkstra算法要解決的是一個有向權重圖中最短路徑的尋找問題,圖中紅色節點1代表起始節點,藍色節點6代表目標結點。箭頭上的數字代表兩個結點中的的距離,也就是模型中所謂的代價(cost)。

貪心算法需要設立兩個集合,open_set(開集)和closed_set(閉集),然後根據以下程序進行操作:

  • 把初始結點放入到open_set中;
  • 把open_set中代價最小的節點取出來放入到closed_set中,並且作為當前節點;
  • 把與當前節點相鄰的節點放入到open_set中,如果代價更小更新代價
  • 重復2-3過程,直到找到終點。

註意open_set中的代價是可變的,而closed_set中的代價已經是最小的代價瞭,這也是為什麼叫做open和close的原因。

至於為什麼closed_set中的代價是最小的,是因為我們使用瞭貪心算法,既然已經把節點加入到瞭close中,那麼初始點到close節點中的距離就比到open中的距離小瞭,無論如何也不可能找到比它更小的瞭。

二、程序代碼

"""

Grid based Dijkstra planning

author: Atsushi Sakai(@Atsushi_twi)

"""

import matplotlib.pyplot as plt
import math

show_animation = True


class Dijkstra:

    def __init__(self, ox, oy, resolution, robot_radius):
        """
        Initialize map for a star planning

        ox: x position list of Obstacles [m]
        oy: y position list of Obstacles [m]
        resolution: grid resolution [m]
        rr: robot radius[m]
        """

        self.min_x = None
        self.min_y = None
        self.max_x = None
        self.max_y = None
        self.x_width = None
        self.y_width = None
        self.obstacle_map = None

        self.resolution = resolution
        self.robot_radius = robot_radius
        self.calc_obstacle_map(ox, oy)
        self.motion = self.get_motion_model()

    class Node:
        def __init__(self, x, y, cost, parent_index):
            self.x = x  # index of grid
            self.y = y  # index of grid
            self.cost = cost
            self.parent_index = parent_index  # index of previous Node

        def __str__(self):
            return str(self.x) + "," + str(self.y) + "," + str(
                self.cost) + "," + str(self.parent_index)

    def planning(self, sx, sy, gx, gy):
        """
        dijkstra path search

        input:
            s_x: start x position [m]
            s_y: start y position [m]
            gx: goal x position [m]
            gx: goal x position [m]

        output:
            rx: x position list of the final path
            ry: y position list of the final path
        """

        start_node = self.Node(self.calc_xy_index(sx, self.min_x),
                               self.calc_xy_index(sy, self.min_y), 0.0, -1)
        goal_node = self.Node(self.calc_xy_index(gx, self.min_x),
                              self.calc_xy_index(gy, self.min_y), 0.0, -1)

        open_set, closed_set = dict(), dict()
        open_set[self.calc_index(start_node)] = start_node

        while 1:
            c_id = min(open_set, key=lambda o: open_set[o].cost)
            current = open_set[c_id]

            # show graph
            if show_animation:  # pragma: no cover
                plt.plot(self.calc_position(current.x, self.min_x),
                         self.calc_position(current.y, self.min_y), "xc")
                # for stopping simulation with the esc key.
                plt.gcf().canvas.mpl_connect(
                    'key_release_event',
                    lambda event: [exit(0) if event.key == 'escape' else None])
                if len(closed_set.keys()) % 10 == 0:
                    plt.pause(0.001)

            if current.x == goal_node.x and current.y == goal_node.y:
                print("Find goal")
                goal_node.parent_index = current.parent_index
                goal_node.cost = current.cost
                break

            # Remove the item from the open set
            del open_set[c_id]

            # Add it to the closed set
            closed_set[c_id] = current

            # expand search grid based on motion model
            for move_x, move_y, move_cost in self.motion:
                node = self.Node(current.x + move_x,
                                 current.y + move_y,
                                 current.cost + move_cost, c_id)
                n_id = self.calc_index(node)

                if n_id in closed_set:
                    continue

                if not self.verify_node(node):
                    continue

                if n_id not in open_set:
                    open_set[n_id] = node  # Discover a new node
                else:
                    if open_set[n_id].cost >= node.cost:
                        # This path is the best until now. record it!
                        open_set[n_id] = node

        rx, ry = self.calc_final_path(goal_node, closed_set)

        return rx, ry

    def calc_final_path(self, goal_node, closed_set):
        # generate final course
        rx, ry = [self.calc_position(goal_node.x, self.min_x)], [
            self.calc_position(goal_node.y, self.min_y)]
        parent_index = goal_node.parent_index
        while parent_index != -1:
            n = closed_set[parent_index]
            rx.append(self.calc_position(n.x, self.min_x))
            ry.append(self.calc_position(n.y, self.min_y))
            parent_index = n.parent_index

        return rx, ry

    def calc_position(self, index, minp):
        pos = index * self.resolution + minp
        return pos

    def calc_xy_index(self, position, minp):
        return round((position - minp) / self.resolution)

    def calc_index(self, node):
        return (node.y - self.min_y) * self.x_width + (node.x - self.min_x)

    def verify_node(self, node):
        px = self.calc_position(node.x, self.min_x)
        py = self.calc_position(node.y, self.min_y)

        if px < self.min_x:
            return False
        if py < self.min_y:
            return False
        if px >= self.max_x:
            return False
        if py >= self.max_y:
            return False

        if self.obstacle_map[node.x][node.y]:
            return False

        return True

    def calc_obstacle_map(self, ox, oy):

        self.min_x = round(min(ox))
        self.min_y = round(min(oy))
        self.max_x = round(max(ox))
        self.max_y = round(max(oy))
        print("min_x:", self.min_x)
        print("min_y:", self.min_y)
        print("max_x:", self.max_x)
        print("max_y:", self.max_y)

        self.x_width = round((self.max_x - self.min_x) / self.resolution)
        self.y_width = round((self.max_y - self.min_y) / self.resolution)
        print("x_width:", self.x_width)
        print("y_width:", self.y_width)

        # obstacle map generation
        self.obstacle_map = [[False for _ in range(self.y_width)]
                             for _ in range(self.x_width)]
        for ix in range(self.x_width):
            x = self.calc_position(ix, self.min_x)
            for iy in range(self.y_width):
                y = self.calc_position(iy, self.min_y)
                for iox, ioy in zip(ox, oy):
                    d = math.hypot(iox - x, ioy - y)
                    if d <= self.robot_radius:
                        self.obstacle_map[ix][iy] = True
                        break

    @staticmethod
    def get_motion_model():
        # dx, dy, cost
        motion = [[1, 0, 1],
                  [0, 1, 1],
                  [-1, 0, 1],
                  [0, -1, 1],
                  [-1, -1, math.sqrt(2)],
                  [-1, 1, math.sqrt(2)],
                  [1, -1, math.sqrt(2)],
                  [1, 1, math.sqrt(2)]]

        return motion


def main():
    print(__file__ + " start!!")

    # start and goal position
    sx = -5.0  # [m]
    sy = -5.0  # [m]
    gx = 50.0  # [m]
    gy = 50.0  # [m]
    grid_size = 2.0  # [m]
    robot_radius = 1.0  # [m]

    # set obstacle positions
    ox, oy = [], []
    for i in range(-10, 60):
        ox.append(i)
        oy.append(-10.0)
    for i in range(-10, 60):
        ox.append(60.0)
        oy.append(i)
    for i in range(-10, 61):
        ox.append(i)
        oy.append(60.0)
    for i in range(-10, 61):
        ox.append(-10.0)
        oy.append(i)
    for i in range(-10, 40):
        ox.append(20.0)
        oy.append(i)
    for i in range(0, 40):
        ox.append(40.0)
        oy.append(60.0 - i)

    if show_animation:  # pragma: no cover
        plt.plot(ox, oy, ".k")
        plt.plot(sx, sy, "og")
        plt.plot(gx, gy, "xb")
        plt.grid(True)
        plt.axis("equal")

    dijkstra = Dijkstra(ox, oy, grid_size, robot_radius)
    rx, ry = dijkstra.planning(sx, sy, gx, gy)

    if show_animation:  # pragma: no cover
        plt.plot(rx, ry, "-r")
        plt.pause(0.01)
        plt.show()


if __name__ == '__main__':
    main()

三、運行結果

四、 A*算法:Djikstra算法的改進

Dijkstra算法實際上是貪心搜索算法,算法復雜度為O( n 2 n^2 n2),為瞭減少無效搜索的次數,我們可以增加一個啟發式函數(heuristic),比如搜索點到終點目標的距離,在選擇open_set元素的時候,我們將cost變成cost+heuristic,就可以給出搜索的方向性,這樣就可以減少南轅北轍的情況。我們可以run一下PythonRobotics中的Astar代碼,得到以下結果:

總結

到此這篇關於python編寫Dijkstra算法進行機器人路徑規劃的文章就介紹到這瞭,更多相關python寫Dijkstra算法內容請搜索WalkonNet以前的文章或繼續瀏覽下面的相關文章希望大傢以後多多支持WalkonNet!

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