Have a issue in running Dstar path planning

19 Ansichten (letzte 30 Tage)
Yasaman Hajnorouzali
Yasaman Hajnorouzali am 30 Mai 2022
Hi
I find a code for Dstar path planning (https://github.com/petercorke/robotics-toolbox-matlab/blob/master/DstarPO.m) But once I run the code in MATLAB I receive an error which is:
DstarMOO
Not enough input arguments.
Error in DstarMOO (line @152)
ds = ds@Navigation(world, varargin{:});
And not sure why I got this error, It would great if anyone could help me?

Akzeptierte Antwort

Geoff Hayes
Geoff Hayes am 30 Mai 2022
@Yasaman Hajnorouzali - your link points to the DstarPO rather than the DstarMOO but I think the issue is that you aren't passing any input parameters into the constructor of this class. Is that the case because the error message seems to indicate that you aren't providing enough input parameters? How are you calling the code? From the examples, you should be doing something similar to
load map1 % load map
goal = [50,30];
start=[20,10];
ds = DstarMOO(map); % create navigation object
  1 Kommentar
Yasaman Hajnorouzali
Yasaman Hajnorouzali am 30 Mai 2022
Thanks for your answer.
One more simple question, Which part should I enter this input parameters (I meant the for instant the map1)
here is the code I used:
%DstarMOO D*-MOO navigation class
%
% A concrete subclass of the Navigation class that implements the D*
% navigation algorithm; facilitates incremental replanning. This
% implementation of D* is intended for multiobjective optimization (MOO)
% problems - i.e. optimizes over several objectives/criteria.
%
% Methods::
% plan Compute the cost map given a goal and map
% path Compute a path to the goal
% visualize Display the obstacle map (deprecated)
% plot Display the obstacle map
% cost_get Return the specified cost layer
% costmap_modify Modify the costmap
% modify_cost Modify the costmap (deprecated, use costmap_modify)
% costmap_get Return the current costmap
% costmap_set Set the current costmap
% distancemap_get Set the current distance map
% display Print the parameters in human readable form
% char Convert to string
%
% Properties::
% TBD
%
% Example::
% load map1 % load map
% goal = [50,30];
% start=[20,10];
% ds = DstarMOO(map); % create navigation object
% ds.plan(goal,1) % create plan for specified goal
% ds.path(start) % animate path from this start location
% Example 2:
% goal = [100;100];
% start = [1;1];
% ds = DstarMOO(0); % create Navigation object with random occupancy grid
% ds.addCost(1,L); % add 1st add'l cost layer L
% ds.plan(goal,2); % setup costmap for specified goal
% ds.path(start); % plan solution path start-goal, animate
% P = as.path(start); % plan solution path start-goal, return path
%
% Notes::
% - Obstacles are represented by Inf in the costmap.
%
% References::
% - The D* algorithm for real-time planning of optimal traverses,
% A. Stentz, Tech. Rep. CMU-RI-TR-94-37, The Robotics Institute,
% Carnegie-Mellon University, 1994.
% - A Pareto Optimal D* Search Algorithm for Multiobjective Path Planning,
% A. Lavin.
% - Robotics, Vision & Control, Sec 5.2.2,
% Peter Corke, Springer, 2011.
%
% Author::
% Alexander Lavin based on Dstar by Peter Corke
%
% See also Navigation, Dstar, DstarPO, Astar, DXform.
% Copyright (C) 1993-2015, by Peter I. Corke, Alexander Lavin
%
% This file is part of The Robotics Toolbox for MATLAB (RTB).
%
% RTB is free software: you can redistribute it and/or modify
% it under the terms of the GNU Lesser General Public License as published by
% the Free Software Foundation, either version 3 of the License, or
% (at your option) any later version.
%
% RTB is distributed in the hope that it will be useful,
% but WITHOUT ANY WARRANTY; without even the implied warranty of
% MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the
% GNU Lesser General Public License for more details.
%
% You should have received a copy of the GNU Leser General Public License
% along with RTB. If not, see <http://www.gnu.org/licenses/>.
%
% http://www.petercorke.com
%
% The RTB implementation of this algorithm is done by Alexander Lavin.
% http://alexanderlavin.com
% Implementation notes:
%
% All the state is kept in the structure called d
% X is an index into the array of states.
% state pointers are kept as matlab array index rather than row,col format
classdef DstarMOO < Navigation
properties (SetAccess=private, GetAccess=private)
costmap % world cost map: obstacle = Inf
G % index of goal point
N % number of objectives
% info kept per cell (state)
b % backpointer (0 means not set)
t % tag: NEW OPEN CLOSED
cost_g % path distance summation
cost_h % path heuristic (state to goal) cost
cost_01 % add'l cost layer 01 (unused)
cost_02 % add'l cost layer 02 (unused)
cost_03 % add'l cost layer 03 (unused)
% add more cost layers if needed...
priority
tie
% list of open states: 2xN matrix
% each open point is a column, row 1 = index of cell, row 2 = k
openlist
niter
changed
openlist_maxlen % keep track of maximum length
quiet
% tag state values
NEW = 0;
OPEN = 1;
CLOSED = 2;
end
methods
% constructor
function ds = DstarMOO(world, varargin)
%DstarMOO.DstarMOO D*MOO constructor
%
% DS = DstarMOO(MAP, OPTIONS) is a D* navigation object, and MAP is an
% occupancy grid, a representation of a planar world as a
% matrix whose elements are 0 (free space) or 1 (occupied).
% The occupancy grid is coverted to a costmap with a unit cost
% for traversing a cell.
%
% Options::
% 'goal',G Specify the goal point (2x1)
% 'metric',M Specify the distance metric as 'euclidean' (default)
% or 'cityblock'.
% 'inflate',K Inflate all obstacles by K cells.
% 'quiet' Don't display the progress spinner
%
% Other options are supported by the Navigation superclass.
%
% Notes::
% - If MAP == 0 a random map is created.
%
% See also Navigation.Navigation.
% invoke the superclass constructor
ds = ds@Navigation(world, varargin{:});
% options
opt.quiet = false;
opt = tb_optparse(opt, varargin);
ds.quiet = opt.quiet;
ds.occgrid2costmap(ds.occgrid);
% init the D* state variables
ds.reset();
if ~isempty(ds.goal)
ds.goal_change();
end
ds.changed = false;
end
function reset(ds)
%DstarMOO.reset Reset the planner
%
% DS.reset() resets the D* planner. The next instantiation
% of DS.plan() will perform a global replan.
% build the matrices required to hold the state of each cell for D*
ds.b = zeros(size(ds.costmap), 'uint32'); % backpointers
ds.t = zeros(size(ds.costmap), 'uint8'); % tags
ds.cost_g = Inf*ones(size(ds.costmap)); % path cost estimate
ds.openlist = zeros(2,0); % the open list, one column per point
ds.openlist_maxlen = -Inf;
end
function goal_change(ds)
if isempty(ds.b)
return;
end
goal = ds.goal;
% keep goal in index rather than row,col format
ds.G = sub2ind(size(ds.occgrid), goal(2), goal(1));
ds.INSERT(ds.G, ds.projectCost(ds.G), 'goalset');
ds.cost_g(ds.G) = 0;
% new goal changes cost layers:
ds.calcHeuristic(ds.occgrid, ds.goal);
end
function s = char(ds)
%DstarMOO.char Convert navigation object to string
%
% DS.char() is a string representing the state of the Dstar
% object in human-readable form.
%
% See also Dstar.display, Navigation.char.
% most of the work is done by the superclass
s = char@Navigation(ds);
% Dstar specific stuff
if ~isempty(ds.costmap)
s = char(s, sprintf(' costmap: %dx%d, open list %d', size(ds.costmap), numcols(ds.openlist)));
else
s = char(s, sprintf(' costmap: empty:'));
end
end
function plot(ds, varargin)
%DstarMOO.plot Visualize navigation environment
%
% DS.plot() displays the occupancy grid and the goal distance
% in a new figure. The goal distance is shown by intensity which
% increases with distance from the goal. Obstacles are overlaid
% and shown in red.
%
% DS.plot(P) as above but also overlays a path given by the set
% of points P (Mx2).
%
% See also Navigation.plot.
plot@Navigation(ds, 'distance', ds.cost_h, varargin{:});
end
% invoked by Navigation.step
function n = next(ds, current)
if ds.changed
error('Cost map has changed, replan');
end
X = sub2ind(size(ds.costmap), current(2), current(1));
X = ds.b(X);
if X == 0
n = [];
else
[r,c] = ind2sub(size(ds.costmap), X);
n = [c;r];
end
end
function plan(ds, goal, N)
%DstarMOO.plan Plan path to goal
%
% DS.plan() updates DS with a costmap of distance to the
% goal from every non-obstacle point in the map. The goal is
% as specified to the constructor.
%
% Note::
% - If a path has already been planned, but the costmap was
% modified, then reinvoking this method will replan,
% incrementally updating the plan at lower cost than a full
% replan.
%
% Inputs:
% goal: goal state coordinates
% N: number of optimization objectives; standard D* is 2
% (i.e. distance and heuristic)
ds.N = N; % number of optimization objectives
ds.openlist = zeros(ds.N+1,0);
% Setup cost layers. If a
% cost layer is goal-dependent, it's setup function needs to
% also be called in DS.goal_change(). If more cost layers are
% needed, add similar to DS.cost_01.
% initializations first:
ds.cost_g = zeros(size(ds.occgrid));
ds.cost_h = zeros(size(ds.occgrid)); % filled after setting goal below
% if add'l costs haven't been added with addCost()
if isempty(ds.cost_01)
ds.cost_01 = zeros(size(ds.occgrid));
end
if isempty(ds.cost_02)
ds.cost_02 = zeros(size(ds.occgrid));
end
if isempty(ds.cost_03)
ds.cost_03 = zeros(size(ds.occgrid));
end
if nargin > 1
ds.goal = goal; % invokes superclass method set.goal()
end
% for replanning no goal is needed,
if isempty(ds.goal)
error('must specify a goal point');
end
% Setup cost layers DS.cost_g and DS.cost_h.
% assign values to the distance cost layer, set as DS.costmap
ds.occgrid2costmap(ds.occgrid);
% assign values to the heuristic cost layer, set as DS.cost_h
ds.calcHeuristic(ds.occgrid, ds.goal);
% Additional cost layers are added by the user with the
% DS.addCost() method
% Cost priority/tiebreaker: cost_g (distance to node)
ds.priority = ds.cost_g;
ds.tie = 1; % first cost: cost_g
ds.niter = 0;
while true
if ~ds.quiet && mod(ds.niter, 20) == 0
ds.spinner();
end
ds.niter = ds.niter + 1;
if ds.PROCESS_STATE() < 0
break;
end
if ds.verbose
disp(' ')
end
end
if ~ds.quiet
fprintf('\r');
end
ds.changed = false;
end
function layer = cost_get(ds)
%DstarMOO.cost_get Get the specified cost layer
layer = ds.cost_02;
end
function c = distancemap_get(ds)
%DstarMOO.distancemap_get Get the current distance map
%
% C = DS.distancemap_get() is the current distance map. This map is the same size
% as the occupancy grid and the value of each element is the shortest distance
% from the corresponding point in the map to the current goal. It is computed
% by Dstar.plan.
%
% See also Dstar.plan.
c = ds.cost_h;
end
function c = costmap_get(ds)
%DstarMOO.costmap_get Get the current costmap
%
% C = DS.costmap_get() is the current costmap. The cost map is the same size
% as the occupancy grid and the value of each element represents the cost
% of traversing the cell. It is autogenerated by the class constructor from
% the occupancy grid such that:
% - free cell (occupancy 0) has a cost of 1
% - occupied cell (occupancy >0) has a cost of Inf
%
% See also Dstar.costmap_set, Dstar.costmap_modify.
c = ds.costmap;
end
function costmap_set(ds, costmap)
%DstarMOO.costmap_set Set the current costmap
%
% DS.costmap_set(C) sets the current costmap. The cost map is the same size
% as the occupancy grid and the value of each element represents the cost
% of traversing the cell. A high value indicates that the cell is more costly
% (difficult) to traverese. A value of Inf indicates an obstacle.
%
% Notes::
% - After the cost map is changed the path should be replanned by
% calling DS.plan().
%
% See also Dstar.costmap_get, Dstar.costmap_modify.
if ~all(size(costmap) == size(ds.occgrid))
error('costmap must be same size as occupancy grid');
end
ds.costmap = costmap;
ds.changed = true;
end
function costmap_modify(ds, point, newcost)
%DstarMOO.costmap_modify Modify cost map
%
% DS.costmap_modify(P, NEW) modifies the cost map at P=[X,Y] to
% have the value NEW. If P (2xM) and NEW (1xM) then the cost of
% the points defined by the columns of P are set to the corresponding
% elements of NEW.
%
% Notes::
% - After one or more point costs have been updated the path
% should be replanned by calling DS.plan().
% - Replaces modify_cost, same syntax.
%
% See also Dstar.costmap_set, Dstar.costmap_get.
if numel(point) == 2
% for case of single point ensure it is a column vector
point = point(:);
end
if numcols(point) ~= numcols(newcost)
error('number of columns in point must match columns in newcost');
end
for i=1:numcols(point)
X = sub2ind(size(ds.costmap), point(2,i), point(1,i));
ds.costmap(X) = newcost(i);
end
if ds.t(X) == ds.CLOSED
ds.INSERT(X, ds.h(X), 'modifycost');
end
ds.changed = true;
end
function addCost(ds, layer, values)
%DstarMOO.addCost Add an additional cost layer
%
% DS.addCost(layer,values) adds the matrix specified by values as a
% cost layer.
% Inputs
% layer: 1, 2, or 3 to specify which cost layer to add
% values: normalized matrix the size of the environment (100x100)
if size(values)~=size(ds.occgrid)
display('Error: layer size does not match the environment')
return
end
if max(max(values))~=1 || min(min(values))~=0
display('Warning: layer values are not normalized [0:1]')
end
if layer==1
ds.cost_01 = values;
elseif layer==2
ds.cost_02 = values;
elseif layer==3
ds.cost_03 = values;
else
display('Layer index out of range')
end
% If more cost layers needed, add additional elseif statements
% as above.
end
end % public methods
methods (Access=protected)
function occgrid2costmap(ds, og, cost)
if nargin < 3
cost = 1;
end
ds.costmap = og;
ds.costmap(ds.costmap==1) = Inf; % occupied cells have Inf driving cost
ds.costmap(ds.costmap==0) = cost; % unoccupied cells have driving cost
end
function calcHeuristic(ds, grid, goal)
ds.cost_h=zeros(size(grid));
for ii=1:size(grid,1)
for jj=1:size(grid,2)
ds.cost_h(ii,jj)=sqrt((ii-goal(1))^2+(jj-goal(2))^2);
end
end
end
% The main D* function as per the Stentz paper, revised for MOO
% path planning per the Lavin paper. Comments Ln are the original
% line numbers.
function r = PROCESS_STATE(d)
% States with the lowest k value are removed from the
% open list
queue = normc(d.openlist(2:size(d.openlist,1),:)');
[~,ind]=min(sum(queue,2));
X = d.openlist(1,ind); % L1
if isempty(X) % L2
r = -1;
return;
end
k_old = d.GET_KMIN(); d.DELETE(X); % L3
d.priority = d.cost_g; % updates priority cost layer
if k_old < d.priority(X) % L4
d.message('k_old < h(X): %f %f\n', k_old, d.priority(X));
for Y=d.neighbours(X) % L5
if (d.priority(Y) <= k_old) && (d.priority(X) > d.updateCosts(Y,X,0)) % L6
d.b(X) = Y;
d.updateCosts(X,Y,d.N); % L7
end
end
end
% can we lower the path cost of any neighbours?
if k_old == d.priority(X) % L8
d.message('k_old == h(X): %f\n', k_old);
for Y=d.neighbours(X) % L9
if (d.t(Y) == d.NEW) || ... % L10-12
( (d.b(Y) == X) && (d.priority(Y) ~= d.updateCosts(Y,X,0)) ) || ...
( (d.b(Y) ~= X) && (d.priority(Y) > d.updateCosts(Y,X,0)) )
% Update and project the costs:
d.updateCosts(Y,X,d.N);
objspace = d.projectCost(Y,X);
d.b(Y) = X;
d.INSERT(Y, objspace, 'L13'); % L13
end
end
else % L14
d.message('k_old > h(X)');
for Y=d.neighbours(X) % L15
if (d.t(Y) == d.NEW) || ( (d.b(Y) == X) && (d.priority(Y) ~= d.updateCosts(Y,X,0)) )
d.updateCosts(Y,X,d.N);
objspace = d.projectCost(Y,X);
d.b(Y) = X;
d.INSERT(Y, objspace, 'L18'); % L18
else
if ( (d.b(Y) ~= X) && (d.priority(Y) > d.updateCosts(Y,X,0)) )
d.INSERT(X, d.projectCost(X), 'L21'); % L21
else
if (d.b(Y) ~= X) && (d.priority(X) > d.updateCosts(Y,X,0)) && ...
(d.t(Y) == d.CLOSED) && d.priority(Y) > k_old
d.INSERT(Y, d.projectCost(Y), 'L25'); % L25
end
end
end
end
end
r = 0;
return;
end % process_state
function k_new = updateCosts(ds, a, b, obj)
% NOTE: Only for costs that accumulate (i.e. sum) over the
% path, and for dynamic costs.
% E.g. the heuristic parameter DS.cost_h only needs updating
% when the goal state changes; it's values are stored for each
% cell.
%
% Location moving from state b to a.
if nargout > 0
k_new = ds.cost_g(b) + ds.dc(b,a);
return
end
if obj == 0 % just return what the new priority cost would be (k_new)
return
end
if obj > 1 % base case
ds.cost_g(a) = ds.cost_g(b) + ds.dc(b,a);
% (no heuristic update needed)
end
if obj > 2 % w/ cost_01: elevation
% (no elevation update needed)
end
if obj > 3 % w/ cost_02: solar
sV = [cos(ds.niter/100);sin(ds.niter/100)]; % rotates 1rad per 100 steps
ds.cost_02(a) = dot(sV,ds.vc(b,a));
end
if obj > 4 % w/ cost_03: risk
% (no risk update needed)
end
end
function pt = projectCost(ds, a, b)
% Returns the projection of state a into objective space. If
% specified, location is moving from b to a.
switch nargin
case 2
pt = [ds.cost_g(a);
ds.cost_h(a);
ds.cost_01(a);
ds.cost_02(a);
ds.cost_03(a);
];
case 3
pt = [ds.cost_g(b) + ds.dc(a,b);
ds.cost_h(a);
ds.cost_01(a);
ds.cost_02(a);
ds.cost_03(a);
];
otherwise
return
end
end
function INSERT(ds, X, pt, where)
% Add state X to the openlist with objective space values
% specified by pt.
% where is for diagnostic purposes only
ds.message('insert (%s) %d = %f\n', where, X, pt);
i = find(ds.openlist(1,:) == X);
if length(i) > 1
error('D*:INSERT: state in open list %d times', X);
end
if ds.t(X) == ds.NEW
% add a new column to the open list
ds.openlist = [ds.openlist [X; pt]];
elseif ds.t(X) == ds.OPEN
% k_new = min( ds.openlist(2,i), h_new );
elseif ds.t(X) == ds.CLOSED
if pt(ds.tie) < ds.priority(X) % break tie with the sum of path costs
% add a new column to the open list
ds.openlist = [ds.openlist [X; pt]];
end
end
% keep track of the max length of the openlist:
if numcols(ds.openlist) > ds.openlist_maxlen
ds.openlist_maxlen = numcols(ds.openlist);
end
ds.t(X) = ds.OPEN;
end
function DELETE(ds, X)
ds.message('delete %d\n', X);
i = find(ds.openlist(1,:) == X);
if length(i) ~= 1
error('D*:DELETE: state %d doesnt exist', X);
end
ds.openlist(:,i) = []; % remove the column
ds.t(X) = ds.CLOSED;
end
function kmin = GET_KMIN(ds)
kmin = min(ds.openlist(2,:));
end
% return the cost of moving from state X to state Y
function cost = dc(ds, X, Y)
[r,c] = ind2sub(size(ds.costmap), [X; Y]);
dist = sqrt(sum(diff([r c]).^2));
dcost = (ds.costmap(X) + ds.costmap(Y))/2;
cost = dist * dcost;
end
% return the robot unit vector; direction of moving from state X to state Y
function vector = vc(ds, X, Y)
[Xi,Xj] = ind2sub(size(ds.occgrid),X);
[Yi,Yj] = ind2sub(size(ds.occgrid),Y);
vector = [Yi-Xi;Yj-Xj];
vector = vector/norm(vector);
% slope = vector(2) / vector(1);
% theta = dot([0,1],[vector])/(norm([0,1])*norm(vector));
end
% return index of neighbour states as a row vector
function Y = neighbours(ds, X)
dims = size(ds.costmap);
[r,c] = ind2sub(dims, X);
% list of 8-way neighbours
Y = [r-1 r-1 r-1 r r r+1 r+1 r+1; c-1 c c+1 c-1 c+1 c-1 c c+1];
k = (min(Y)>0) & (Y(1,:)<=dims(1)) & (Y(2,:)<=dims(2));
Y = Y(:,k);
Y = sub2ind(dims, Y(1,:)', Y(2,:)')';
end
end % protected methods
end % classdef

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