assignkbest

Assignment using k-best global nearest neighbor

Description

[assignments,unassignedrows,unassignedcolumns,cost] = assignkbest(costmatrix,costofnonassignment) returns a table of assignments, assignments, of detections to tracks using the Munkres algorithm. The algorithm finds the global nearest neighbor (GNN) solution that minimizes the total cost of the assignments.

The cost of each potential assignment is contained in the cost matrix, costmatrix. Each matrix entry represents the cost of a possible assignments. Matrix rows represent tracks and columns represent detections. All possible assignments are represented in the cost matrix. The lower the cost, the more likely the assignment is to be made. Each track can be assigned to at most one detection and each detection can be assigned to at most one track. If the number of rows is greater than the number of columns, some tracks are unassigned. If the number of columns is greater than the number of rows, some detections are unassigned. You can set an entry of costmatrix to Inf to prohibit an assignment.

costofnonassignment represents the cost of leaving tracks or detections unassigned. Higher values increase the likelihood that every existing object is assigned.

All inputs must all be single precision or all be double precision.

The function returns a list of unassigned tracks, unassignedrows, a list of unassigned detections, unassignedcolumns, and the cost of assignment, cost.

example

[assignments,unassignedrows,unassignedcolumns,cost] = assignkbest(costmatrix,costofnonassignment,k)also specifies the number, k, of k-best global nearest neighbor solutions that minimize the total cost of assignments. In addition to the best solution, the function uses the Murty algorithm to find the remaining k-1 solutions.

[assignments,unassignedrows,unassignedcolumns,cost] = assignkbest(costmatrix,costofnonassignment,k,algorithm) also specifies the algorithm, algorithm, for finding the assignments.

Examples

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Create a cost matrix containing prohibited assignments. Then, use the assignkbest function to find the 5 best solutions.

Set up the cost matrix to contain some prohibited or invalid assignments by inserting Inf into the matrix.

costMatrix = [10 5 8 9; 7 Inf 20 Inf; Inf 21 Inf Inf; Inf 15 17 Inf; Inf inf 16 22];
costOfNonAssignment = 100;

Find the 5 best assignments.

[assignments,unassignedrows,unassignedcols,cost] = ...
    assignkbest(costMatrix,costOfNonAssignment,5)
assignments=5×1 cell
    {4x2 uint32}
    {4x2 uint32}
    {4x2 uint32}
    {4x2 uint32}
    {4x2 uint32}

unassignedrows=5×1 cell
    {[3]}
    {[3]}
    {[3]}
    {[4]}
    {[5]}

unassignedcols=5×1 cell
    {0x1 uint32}
    {0x1 uint32}
    {0x1 uint32}
    {0x1 uint32}
    {0x1 uint32}

cost = 5×1

   147
   151
   152
   153
   154

Input Arguments

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Cost matrix, specified as an M-by-N matrix. M is the number of tracks to be assigned and N is the number of detections to be assigned. Each entry in the cost matrix contains the cost of a track and detection assignment. The matrix may contain Inf entries to indicate that an assignment is prohibited. The cost matrix cannot be a sparse matrix.

Data Types: single | double

Cost of non-assignment, specified as a scalar. The cost of non-assignment represents the cost of leaving tracks or detections unassigned. Higher values increase the likelihood that every object is assigned. The value cannot be set to Inf.

Data Types: single | double

Number of best solutions, specified as a positive integer.

Data Types: single | double

Assignment algorithm, specified as 'munkres' for the Munkres algorithm, 'jv' for the Jonker-Volgenant algorithm, or 'auction' for the Auction algorithm.

Example: 'jv'

Data Types: char | string

Output Arguments

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Assignment of tracks to detections, returned as a k-element cell array. k is the number of best solutions. Each cell contains an Li-by-2 matrix of pairs of track indices and assigned detection indices. Li is the number of assignment pairs in the ith solution cell. The first column of each matrix contains the track indices and the second column contains the assigned detection indices.

Indices of unassigned tracks, returned as a k-element cell array. Each cell is a Pi vector where Pi = M - Li is the number of unassigned rows in the ith cell. Each element is the index of a row to which no columns are assigned. k is the number of best solutions.

Data Types: uint32

Indices of unassigned detections, returned as a k-element cell array. Each cell is a Qi vector where Qi = M - Li is the number of unassigned detections in the ith cell. Each element is the index of a column to which no rows are assigned. k is the number of best solutions.

Data Types: uint32

Total cost of solutions, returned as a k-element vector. Each element is a scalar value summarizing the total cost of the solution to the assignment problem.

Data Types: single | double

References

[1] Samuel Blackman and Robert Popoli. Design and Analysis of Modern Tracking Systems, Artech House, 1999.

Extended Capabilities

C/C++ Code Generation
Generate C and C++ code using MATLAB® Coder™.

Introduced in R2018b