1. Field
The present invention relates to path search techniques and, more particularly, to systems and methods to aid routing around obstacles such as for integrated circuit (e.g., VLSI) routing.
2. Description of the Related Art
There are many important practical applications for path searching. The classic, student's example is the traveling salesman searching for an efficient path to visit a list of locations. Some search methods are useful to plan the movement of a robot across a room around obstacles such as furniture or the movement of a robot arm through space around obstacles. One practical and currently very important engineering application of path searching is found in the semiconductor and electronics arts. Path searching and routing techniques are typically employed for layout of conductive traces. Other practical applications are well known.
The classical path searching problem and current techniques can be understood in the context of searching for a shortest path from a source point or location to a target point or location through clear space of a routing region (two-dimensional or otherwise) around various obstacles in the routing region. More specifically, assume that inside a rectangular routing region there are several rectilinear obstacles. The space not occupied by the obstacles may be called clear space. For any given two points inside the clear space, the minimum cost path search problem is to find the path with the minimum cost (e.g., the shortest path or by some other measure) inside the clear space that connects them.
Computational efficiency of path search and routing techniques is important, particularly for complex routing problems such as those presented by modern semiconductor technology and applications such as VLSI routing. Existing approaches to solving this problem typically suffer from at least one, and sometimes all of the following disadvantages: (i) complexity, (ii) overlong computational time, (iii) failure to achieve an optimal path when multiple paths exist, (iv) failure to find a path when one exists. The semiconductor routing industry, for example, is constantly looking to improve techniques for solving this problem to mitigate or eliminate the above disadvantages.
A method for finding shortest paths is disclosed which uses a piecewise linear cost model to guide the search of through a tile graph and to facilitate the finding of a shortest path in a computationally effective manner. As described in further detail hereafter, the search area is fractioned into a number of tiles, each tile being defined by a set of boundary segments. Cost function propagation from tile segment to tile segment is used to search for a target location from a source location through a region, and the shortest path is found by tracing backwards using the cost functions calculated during the searching. Linear minimal convolution is used to facilitate the cost function propagation.
In an exemplary search problem, each tile in the traversable region is defined by boundary segments. The source cost function provides a cost for traversing from the source location to the boundary segment in question. The target cost function provides a cost for traversing from the boundary segment in question to the target location. In some embodiments described herein, the target cost function is estimated, and the source cost function is calculated. A path cost function is determined by adding the source and target cost functions. To facilitate the cost function calculations, multiple forms of cost function propagation between segments are disclosed.
A cost function may be propagated across tiles or cells of a clear space decomposition. For example, in a two-dimensional realization, a cost function may be propagated from one edge of a tile or cell to another, even without explicitly calculating a value for a propagation cost across the tile. In a realization suitable for rectilinear tiles described herein, techniques are provided for propagation of a piecewise linear function from one edge of a tile to (1) a parallel-oriented edge or (2) a perpendicular-oriented edge. By propagating cost functions and searching for least cost paths based on the propagated costs, some realizations in accordance with the present invention provide efficient routing or path planning. For example, a shortest path may be found using back pointers to select a the previous boundary segment on the shortest path and using the propagated cost functions to select the point at which the shortest path intersects the previous boundary segment.
For example, in VLSI design, shortest path routing solutions attempt to connect two or more geometries with a shortest possible wire length. One way to solve this problem is to use tile expansion. Non-used tiles can be stored in a data structure suitable for tile operations such as searching, tile insertion, and tile deletion. For any given pair of source and target geometries, the routing is successful if there is a sequence of clear tiles connecting them. For any given tile, there may be several neighboring tiles and an efficient search technique is important. An approach described herein employs minimum cost function propagation and propagates the minimum cost function across tiles by hopping from one piece of shared tile boundary segment to another piece of shared tile boundary segment. Based on this propagation scheme, searching methods such as A* search can be used to find the target tile. After searching, a least cost path can be traced backwards from the passing segments.
It has been further discovered that some aspects of a cost function propagation technique can be implemented using an efficient algorithm for linear minimum convolution (LMC) described herein. In general, the linear minimum convolution problem can be described as follows: assume ƒ(x) is a piecewise linear function defined over the interval, [a, b]. At any given point (x,ƒ(x)), a symmetric vertical cone is attached. The area covered by all cones is open at the top and the area's boundary is a piecewise linear function that is called linear minimum convolution. A straightforward LMC implementation takes a number of steps that is quadratic in terms of number of knot points of the piecewise linear function. In contrast, the discovered techniques provide an implementation that takes a number of steps that is linear in the number of knot points. Accordingly, computational efficiency can be enhanced for realizations of the described cost function propagation technique or of realizations of path search and/or routing algorithms that employ the discovered linear minimum convolution implementation. While applications of the efficient algorithm are not limited to shortest path routing problems in VLSI, some realizations are particularly advantageous given the computational scale of such routing problems.
The foregoing is a summary and thus contains, by necessity, simplifications, generalizations and omissions of detail. Consequently, those skilled in the art will appreciate that the foregoing summary is illustrative only and that it is not intended to be in any way limiting of the invention. Other aspects, inventive features, and advantages of the present invention, as defined solely by the claims, may be apparent from the detailed description set forth below.
The present invention may be better understood, and its numerous objects, features, and advantages made apparent to those skilled in the art by referencing the accompanying drawings (denoted “Figure” or “FIG.”). The use of the same reference symbols in different drawings indicates similar or identical items.
The following discussion is intended to provide a detailed description of at least one example of the invention and should not be taken to be limiting of the invention itself. Rather, any number of variations may fall within the scope of the invention which is properly defined in the claims following this description.
For the sake of simplicity of the following discussion and to avoid obfuscating the invention, the following description uses Manhattan paths between the source and target. That is, each path consists of an alternating sequence of vertical and horizontal line segments joined at the ends. (Other embodiments may employ other types of paths, and the basic principles described herein will apply by extension.) In the presently discussed examples, the cost of a Manhattan path is given by the weighted Manhattan distance: c=αLH+βLV where LH and LV are the sums of the lengths of the horizontal and vertical segments, respectively, and α≧0, β≧0, are the horizontal and vertical weights, respectively. The weight α may be less than (or greater than) the weight β, for example, in order to encourage preferential routing in the horizontal (or vertical) direction. Also, α and β may vary from tile to tile (defined hereafter) to discourage routing in areas that are known to be congested (for example, because of an earlier global routing analysis).
Referring to
Tile graphs such as tile graph 30 are useful because they are compact. Both the number of clear tiles and the number of edges between clear tiles are linear in the number of solid tiles. This is a significant improvement over other graphing methods in which the computational features can be quadratic or geometric in the number of relevant graph features (e.g., nodes). Typically, for identical geometry, the tile graph representation is much smaller than superimposed grid techniques (uniform or non-uniform) and line probe techniques, all of which are well known in the art. At the same time, based on the teachings herein, a tile graph in accordance with the invention can be used to find the shortest path. Note that there may be multiple “shortest paths” as more than one path may have the same shortest length or cost. The embodiments described herein use an exact, piecewise linear, cost model to guide the search for the shortest path in the tile graph. This allows a much more compact graph search than past grid graphs while still finding the shortest path.
Tile graph 30 is explored beginning with the tile containing the source (tile C5 in
For each boundary segment, a piecewise linear function is maintained to provide the cost of the shortest path (found so far) from the source to any point on that boundary segment. This cost function is referred to herein as the source cost of the boundary segment. For the present example,
In addition to the source cost, each boundary segment is associated with at least one back pointer that facilitates the reconstruction of the shortest path. This back pointer always points to the preceding boundary segment (or to the source point, S) along the path from the source to the boundary segment in question.
As shown in
Next, a path cost is computed for each boundary segment of the current tile during compute operation 530. The path cost is computed by first forming the sum of two piecewise linear functions: the source cost and the target cost. The source cost is defined above. The target cost gives a lower bound on the cost of a path from each point on a boundary segment to the target. The value of the target cost function at each point on the boundary segment is given by the weighted Manhattan distance between that point and the target. The weighted Manhattan distance is computed using the weights: αmin and βmin, given by the minimum values of α and β over all clear tiles. The path cost is the minimum value of the sum of the source cost and the target cost taken at each point on the boundary segment. Calculation of an estimated target cost is discussed in greater detail below with reference at least to
Next, during prioritize operation 535, the boundary segments are prioritized. For example, a queue is maintained wherein the boundary segments are represented and ordered on the basis of such path costs. All boundary segments on the periphery of the search region are held by a priority queue.
After prioritize operation 535, the priority queue is checked during decision 560. If the priority queue is not empty, control transitions to decision 565 during which it is determined whether the target's source cost is less than the path cost of the next boundary segment in the priority queue. If the target's source cost is greater than the path cost of the next boundary segment in the priority queue, then control transitions to operation 540 and the search is continued until either the priority queue is empty at decision 560 or the target's source cost is less than the path cost of the next boundary segment in the priority queue at decision 565.
During select next boundary segment operation 540, a boundary segment is popped from the queue. The well known A* search heuristic is used to decide which boundary segment to visit next. In the presently discussed embodiment, the segment with the smallest path cost is always at the top of the priority queue. This is the segment to be visited next. In the present example, the priority queue initially holds segments (C4, C5) and (C5, C7) (see, e.g.,
When a boundary segment is selected as the next boundary segment using the search heuristic during select operation 540, it becomes a place of entry, the entry segment, into a new clear tile. After select operation 540, decision 550 directs a transition to compute new target source cost operation 555 if the target has been reached or to estimate path costs operation 545 if the target tile has not been reached.
During compute exit boundary segment source costs operation 545, the cost of paths from the source through the entry segment to the new tile's other boundary segments, the exit segments, are calculated. Each of exit segment may or may not be different from the entry segment. A new source cost is computed for each exit segment and compared to the source cost already stored on that segment (e.g., an initialized value of the source cost). If the newly computed source cost is less than the old source cost (at any point), then a shorter path has been found. In that case that exit segment's source cost is set to the minimum of the two source costs, the back pointer(s) is(are) updated, and the segment is entered into the priority queue at the appropriate location for future consideration.
For example, once tile C4 is entered through entry segment (C4, C5), new source costs are computed for exit segments (C4, C2), (C4, C3), and (C4, C6) (see, e.g.,
After the exit segments for the new tile have been processed during operation 545, the next boundary segment is removed from the priority queue and the search continues recursively at operation 540. For the present example, (C4, C3) will be removed from the priority queue because it has the smallest path cost. The search process continues recursively, initially with tile C3, for example.
If a tile containing the target, T, is encountered at target tile decision 550, then a path has been found from the source to the target. In that case, the source cost of the entry segment is used to compute a new source cost for the target during compute new target source cost operation 555. Since the target is a point, its source cost is a scalar value. If the new source cost is lower than the target's previous source cost, then a new shortest path has been found. Control then transitions to decision 560. As discussed above, the search is continued at operation 540 unless either the priority queue is empty at decision 560 or the target's source cost is less than the path cost of the next boundary segment in the priority queue at decision 565. Upon termination due to one of those two conditions being satisfied during decisions 560 or 565, the source cost of the target gives the weighted Manhattan distance of the shortest path from S to T. The back pointer stored at the target, can be followed to retrace, in reverse order, the sequence of boundary segments visited by the shortest path, as illustrated in
The following pseudo-code provides one exemplary search algorithm which is useful in view of the teachings herein:
As described above, when a new tile is entered via the entry segment we need to compute the cost of paths from the source through the entry segment to each of the tile's exit segments. The path cost for a boundary segment is equal to the minimum value of the sum of the source cost and the target cost taken at each point on the boundary segment. Thus, referring to
Among possible searching methods, the A* search method is attractive because it balances real cost and estimated cost. As discussed above, an estimated cost is calculated during operation 610. If the target is a point, then the estimated cost is simply a manhattan distance to the target. In the event an embodiment is used which includes a rectilinear tile target, a method of calculating the estimated cost of a segment to the destination tile T will now be discussed with reference to
To estimate the target cost, the minimum cost function to four sides of the target tile T can be evaluated. For example, a brute force method involves the application of the cost propagation method provided herein four times, one for each side of the target tile T.
However, at most three propagations are usually enough to find the minimum function to the four sides of T. This is because the minimum connections from some sides of T are always higher than from those of the other sides. For example, referring to
After select target sides operation 2320, the orientation of the segment to the selected target side is determined during decision 2330. If the selected target side is determined to be parallel to AB during decision 2330, then a method of cost propagation between parallel line segments is used to compute the minimum cost function to the target tile T during parallel cost calculation operation 2340. Alternatively, if the selected target side is determined to be perpendicular to segment AB during decision 2330, then a method of cost propagation between perpendicular line segments is used to compute the minimum cost function to the target tile T during perpendicular cost calculation operation 2350. Exemplary parallel and perpendicular cost propagation is discussed below with reference to the Linear Minimal Convolution which is introduced herein.
After either of operations 2340 and 2350, control transitions to decision 2360 which determines whether all non-hull sides of the target have been selected. If there are remaining non-hull sides of the target which have not yet been selected, control transitions to operation 2320 for selection of the next target side. If all non-hull sides of the target have been selected, the minimum function is found of all the minimum functions found during operations 2340 and 2350. The minimum estimated target cost function is returned via this method.
If the entry segment's source cost is piecewise linear then the exit segment's source cost is also piecewise linear. This propagation of costs involves a computation taught herein called the Linear Minimal Convolution (LMC) which is discussed below.
Let the coordinates of the bottom left and top right corners of the currently selected clear tile be: (xBL,yBL), and (xTR,yTR), respectively. Let the tile's horizontal and vertical weights be α, and β, respectively. For simplicity, the entry segment of the present discussion is assumed to be a horizontal line segment coincident with the bottom edge of the clear tile: xε[α,b], y=yBL as shown in
There are two cases to consider: the entry and exit segments may be perpendicular or parallel to each other. Referring to
For the first case in which the entry and exit segments are determined to be perpendicular to each other during operation 2410, the following discussion assumes the exit segment lies along the left edge of the clear tile: x=xBL, y ε[c,d] as shown in
where
is a constant with respect to y. Referring again to
For second case in which the entry and exit segments are determined to be parallel to each other during operation 2410, the following discussion assumes an exemplary set of circumstances in which the exit segment is coincident with the top edge of the clear tile: x ε[c,d], y=yTR as shown in
Referring again to
is a continuous function and can be computed during operation 2424 by a process we refer to as linear minimum convolution (LMC) which is discussed herein with reference to
In discussing the LMC, the notation (α*ƒ)(x) is used to represent the linear minimal convolution (LMC) of a weight α (where α≦0) with a function ƒ(x) (sometimes designated herein as the piecewise linear function L). Thus the LMC is defined as:
Suppose ƒ(x) is defined for a single value of x:x=0, and that ƒ(0)=0. Then the LMC is given by:
as shown in
Next suppose that ƒ(x) is defined for a single value of x:x=a, and allow ƒ(α) to be some arbitrary value. Then the LMC is given by:
(α*ƒ)(x)=ƒ(α)+α|x−α|
as shown in
Next suppose ƒ(x) is function defined for two values of x:x=α and x=β. Then the LMC is given by:
as shown in
The above procedure can be applied if the domain of ƒ(x) consists of any number of values. For example, if ƒ(x) is defined over the interval [α,b] then the domain of ƒ(x) is composed of an infinite number of values. Each of those values contributes an LMC Kernel. The LMC is given by the minimum of an infinite number of LMC kernels. An example of a resulting linear minimum convolution of a piecewise linear function is
A number of properties are apparent from the above discussion. First, if ƒ(x) is piecewise linear then so is the LMC: (α*ƒ)(x). Secondly, suppose the LMC (α*ƒ)(x) is a piecewise linear function. That piecewise linear function consists of a sequence of line segments. The magnitude of the slopes of all the line segments must be less than α. The LMC operation “filters out” line segments of higher slope. Thirdly, suppose two LMC operations are performed in succession on a piecewise linear function: (α2*(α1*ƒ))(x). If the second LMC has a larger weight than the first: α2 α1 then the second LMC operation will have no effect: (α2*(α1*ƒ))(x)=(α1*ƒ)(x). This is true because the first LMC yields a piecewise linear function with line segments with slope magnitudes less than α1 (from the previous property). When an LMC kernel with steeper slopes α2 slides along a function with shallower slopes then no new minimums will be found. Also, displacing a function displaces its LMC as well. The LMC of a linear function is a piecewise linear function.
The LMC computation may be effectively used to choose paths through the tiles. As discussed above, the source cost at any point along a line a distance h away from the entry segment is the sum of two terms. (See
g(x)=(α*ƒ)(x)+βh
The term: βh is the cost of the vertical portion of the path inside this tile. The term: (α*ƒ)(x) (the LMC) is the source cost from the entry segment plus the cost of the horizontal portion of the path inside this tile.
The LMC envelope is composed from two kinds of line segments: those that originate from the source cost function ƒ(x) (the thick lines in
The LMC of a piecewise linear function can be found by finding the minimum of the LMCs of all the functions linear segments. For example, assume ƒ(x) is piecewise linear defined as
(xi,ƒ(xi)),0i n−1,α=x0 x1. . . xn−1 xn=b.
The brute force approach of finding the LMC of ƒ(x) is to compute (α*ƒi)(x) first. Function (α*ƒ)(x) can be computed by finding the minimum of all functions (α*ƒi)(x). The fastest algorithm for finding the minimum function of two piecewise linear functions is linear in terms of n, the number of segments. Therefore, the brute force algorithm to computer LMC of ƒ(x) is quadratic in terms of number of segments.
Another method may be more preferred since it is a linear algorithm to compute the LMC of ƒ(x). For every linear segment ƒ(x), (a*ƒ)(x) has two infinite lines, a backward leg and a forward leg. The LMC of ƒ(x) can be found by clipping ƒ(x) using all the legs and saving the lower line segments. This algorithm has two sweeps: a forward clipping sweep and a backward clipping sweep.
As shown in
After operation 2020 and during clipping decision 2030, it is determined if any forward leg originating from point αi (e.g., a knot of the cost function) of the boundary segment is clipping. A line segment is clipping if it intersects any piecewise linear segment of the cost function. More specifically, at any given point αi not including the other endpoint b of the selected boundary segment, a forward leg starting from (αi,ƒ(αi)) is clipping if the slope of ƒi(x) is greater than α. When the slope of ƒi(x) is positive and greater than α, the leg goes under the segment and therefore it is clipping. The LMC of ƒ(x) includes only parts of line segments of ƒ(x), forward legs and backward legs. The clipping process chops out the parts of segments that are not part of the LMC. After a clipping forward leg intersects ƒ(x), the remaining line segment is no longer clipping.
If a forward leg of (α*ƒ)(x) starting at αi is not clipping during clipping decision 2030, then the function ƒ(x) defines the LMC at that point during operation 2060, and control transitions to operation 2070 therefrom.
If a forward leg of (α*ƒ)(x) starting at αi is clipping during decision 2030, then the next linear segment ƒj(x) that intersects that leg is found during operation 2040. All knot points αk,k=i, . . . ,j will be ignored because they will not generate any linear segments lower than the current leg. For example, during operation 2050, clipping discards such knot points from the list of knot points for the segment selected during operation 2010. After any clipped knot points are discarded, the intersection point of the segment of ƒ(x) and the forward leg is added to the list of knot points. Thus, the forward leg defines the LMC over the span of the discarded knot points. However, during a backward sweep, additional knot points may be clipped from the list of knot points corresponding to the cost function ƒ(x). Thus, in a worst case scenario, the same number of knot points remain for analysis after a sweep operation, and in better case scenarios, fewer knot points remain for analysis.
The process resumes for the next point (e.g., new αi=αj+1) during operation 2070 and continues at clipping decision 2030 until endpoint β of the boundary segment is encountered during end decision 2070.
The backward sweep is substantially the opposite of the forward sweep, starting from endpoint b and clipping the modified piecewise linear function using all clipping backward legs. A backward leg starting from (αi,ƒ(αi)) is clipping if and only if the slope of ƒi−1(x) is negative and less than −α. After a clipping backward leg intersects ƒ(x), the remaining line segment is no longer clipping.
The following pseudo-code provides one exemplary forward leg portion of an LMC calculation method which is useful in view of the teachings herein:
When the search algorithm terminates, the sequence of boundary segments visited by the shortest path are known. The shortest path may then be reconstructed from the piecewise linear source costs stored in those boundary segments. One method is to record the origin of each segment of the piecewise linear function computed by the LMC (e.g., whether it is from ƒ(x) or the LMC kernel). However, a router typically spends the bulk of its time in the search phase and this approach may slow down the search. It is more efficient to simply rerun the LMC calculation over the much smaller number of boundary segments in the back trace.
Path reconstruction begins with the portion of the shortest path lying within the tile containing the target (e.g., the path from the target to a point on the boundary segment found to be part of the shortest path). The back pointer in the target (e.g., represented by the arrow in
During insert minimum point operation 2520, the point P(xp,yp) is inserted into a list of points on the path from the source to the target. Next, using a back pointer, the entry segment (s) in the previous tile T is found during find previous entry segment operation 2525. After find previous entry segment operation 2525 and during source tile decision 2530, it is determined whether the source has been reached. For example, it is determined whether tile T is the source tile. If tile T is the source tile, no further back tracking need be performed because the shortest path has been found (e.g., through the list of path points). If tile T is not the source tile, control transitions to orientation decision 2540 for orientation dependent back tracing to find additional pieces of the path from the source to the target through a point on the currently selected entry segment s.
During decision 2540, it is determined if the boundary segment s on the back path from the target is horizontal or vertical. If the segment s is horizontal, then horizontal back tracing is performed during operations 2550. If the segment s is vertical, then vertical back tracing is performed during operations 2560.
The first operation of horizontal operations 2550 is find source cost function operation 2552. During find source cost operation 2552, the source cost function ƒ(x) on the segment s is found. Path reconstruction uses the equations for source cost propagation described above to find the x-value of the point P through which the shortest path intersects the segment s. However, during path reconstruction the target's position and source cost is known, and we wish to recover the point on the entry segment that gave us this minimum cost. Let the coordinates of the target be: (xT,yT). Then, as demonstrated above, the source cost at the target is given by:
where
The quantity inside the minimum: p(x)=ƒ(x)+α|x−xT is piecewise linear, and is analyzed using its knot points. The knot points of the source cost function ƒ(x) and of the horizontal tile or propagation cost function α|x−xT| are found during find knot points operation 2554. After find knot points operation 2554, the knot point that provides the minimum value of the sum of the source cost and propagation cost functions is found during find minimum knot point operation 2556. In this case, the x value of the knot point M on the segment s which has the minimum value for p(x) is found by examining the knots of p(x). However, rather than calculate the value of m (which is known during path reconstruction), we instead record the value of x, xm, that leads to this minimum. Thus, the x value of the knot point which gives the minimum value m is recorded during operation 2556, for example. The shortest path enters this tile through the point on the entry segment: (xm,yBL). In this example, the segment is a horizontal segment at the bottom (e.g., y=yBL) of the tile T. An analogous method may be used for calculating a horizontal segment at the top of a tile.
After the x value of the point P through which the shortest path intersects the current segment s is found, the point P may be recorded because the y value is already known. For example, when the segment is horizontal as shown in
Similarly, if the segments are determined to be vertical during decision 2540, the horizontal or x location of the entry point is known since the value for x is the same for the entirety of the entry segment. Path reconstruction uses the equations for source cost propagation described above to find y during operations 2560.
During find source cost operation 2562, the knot points of the source cost function are found. Next, the list of knot points of the piecewise linear function g1(y)=g(y)+β|y−yp| is found during find knot points operation 2564. Next, the knot point that provides the minimum value of the function g1(y) is found during operation 2564. Next, because the x value is known when the segment s is vertical, and y value was determined during operation 2566, the point P through which the path intersects the entry segment s is set to (sx,ym) during set path point operation 2568.
After each of operations 2558 and 2568, control transitions to operation 2520 where the point P is inserted into the list of point points. A new entry segment is selected using back pointer(s) in subsequent operations thereafter.
In
The above calculation is repeated recursively back to the source to construct the remainder of the path. The entry point for this tile becomes the exit point for the preceding tile and we repeat the calculation for the preceding boundary segment as shown in
The foregoing description sets forth a novel shortest path search algorithm based on the propagation of piecewise linear costs between the boundaries of clear tiles in a tile graph. Unlike earlier tile algorithms, the above described algorithm always finds the shortest path. Unlike the earlier non-uniform grid graph algorithms, the above described algorithm traverses the tile graph which is much smaller than a grid graph. One factor related to the efficiency of the above described algorithm is the observation that for VLSI routing examples, the number of knots in the piecewise linear costs is constant. This implies that one can traverse an edge in the tile graph in constant time.
The above description is intended to describe at least one embodiment of the invention. The above description is not intended to define the scope of the invention. Rather, the scope of the invention is defined in the claims below. Thus, other embodiments of the invention include other variations, modifications, additions, and/or improvements to the above description.
For example, those skilled in the art will recognize that boundaries between the functionality of the above described operations are merely illustrative. The functionality of multiple operations may be combined into a single operation, and/or the functionality of a single operations may be distributed in additional operations. Moreover, alternative embodiments may include multiple instances of a particular operation, and the order of operations may be altered in various other embodiments.
The operations discussed herein may consist of steps carried out by system users, hardware modules and/or software modules. In other embodiments, the operations of
Those skilled in the art will recognize that the boundaries between modules are merely illustrative and alternative embodiments may merge modules or impose an alternative decomposition of functionality of modules. For example, the modules discussed herein may be decomposed into submodules to be executed as multiple computer processes. Moreover, alternative embodiments may combine multiple instances of a particular module or submodule.
The above described method, the operations thereof and modules therefor may be executed on a computer system configured to execute the operations of the method and/or may be executed from computer-readable media. Computer systems may be found in many forms including but not limited to mainframes, minicomputers, servers, workstations, personal computers, notepads, personal digital assistants, various wireless devices and embedded systems, just to name a few. A typical computer system includes at least one processing unit, associated memory and a number of input/output (I/O) devices. A computer system processes information according to a program and produces resultant output information via I/O devices. A program is a list of instructions such as a particular application program and/or an operating system. A computer program is typically stored internally on computer readable storage media or transmitted to the computer system via a computer readable transmission medium. A computer process typically includes an executing (running) program or portion of a program, current program values and state information, and the resources used by the operating system to manage the execution of the process. A parent computer process may spawn other, child processes to help perform the overall functionality of the parent process. Because the parent process specifically spawns the child processes to perform a portion of the overall functionality of the parent process, the functions performed by child processes (and grandchild processes, etc.) may sometimes be described as being performed by the parent process.
The method may be embodied in a computer-readable medium for configuring a computer system to execute the method.
It is to be understood that the architectures depicted herein are merely exemplary, and that in fact many other architectures can be implemented which achieve the same functionality. In an abstract, but still definite sense, any arrangement of components to achieve the same functionality is effectively “associated” such that the desired functionality is achieved. Hence, any two components herein combined to achieve a particular functionality can be seen as “associated with” each other such that the desired functionality is achieved, irrespective of architectures or intermedial components. Likewise, any two components so associated can also be viewed as being “operably connected”, or “operably coupled”, to each other to achieve the desired functionality.
Because the above detailed description is exemplary, when “one embodiment” is described, it is an exemplary embodiment. Accordingly, the use of the word “one” in this context is not intended to indicate that one and only one embodiment may have a described feature. Rather, many other embodiments may, and often do, have the described feature of the exemplary “one embodiment.” Thus, as used above, when the invention is described in the context of one embodiment, that one embodiment is one of many possible embodiments of the invention.
Notwithstanding the above caveat regarding the use of the words “one embodiment” in the detailed description, it will be understood by those within the art that if a specific number of an introduced claim element is intended in the below claims, such an intent will be explicitly recited in the claim, and in the absence of such recitation no such limitation is present or intended. For example, in the claims below, when a claim element is described as having “one” feature, it is intended that the element be limited to one and only one of the feature described. Furthermore, when a claim element is described in the claims below as including or comprising “a” feature, it is not intended that the element be limited to one and only one of the feature described. Rather, for example, the claim including “a” feature reads upon an apparatus or method including one or more of the feature in question. That is, because the apparatus or method in question includes a feature, the claim reads on the apparatus or method regardless of whether the apparatus or method includes another such similar feature. This use of the word “a” as a nonlimiting, introductory article to a feature of a claim is adopted herein by Applicants as being identical to the interpretation adopted by many courts in the past, notwithstanding any anomalous or precedential case law to the contrary that may be found. Similarly, when a claim element is described in the claims below as including or comprising an aforementioned feature (e.g., “the” feature), it is intended that the element not be limited to one and only one of the feature described merely by the incidental use of the definite article.
Furthermore, the use of introductory phrases such as “at least one” and “one or more” in the claims should not be construed to imply that the introduction of another claim element by the indefinite articles “a” or “an” limits any particular claim containing such introduced claim element to inventions containing only one such element, even when the same claim includes the introductory phrases “one or more” or “at least one” and indefinite articles such as “a” or “an.” The same holds true for the use of definite articles.
While particular embodiments of the present invention have been shown and described, it will be obvious to those skilled in the art that, based upon the teachings herein, various modifications, alternative constructions, and equivalents may be used without departing from the invention claimed herein. Consequently, the appended claims encompass within their scope all such changes, modifications, etc. as are within the spirit and scope of the invention. Furthermore, it is to be understood that the invention is solely defined by the appended claims. The above description is not intended to present an exhaustive list of embodiments of the invention. Unless expressly stated otherwise, each example presented herein is a nonlimiting or nonexclusive example, whether or not the terms nonlimiting, nonexclusive or similar terms are contemporaneously expressed with each example. Although an attempt has been made to outline some exemplary embodiments and exemplary variations thereto, other embodiments and/or variations are within the scope of the invention as defined in the claims below.
This application relates to and claims priority from the following co-pending provisional patent applications: U.S. provisional patent application Ser. No. 60/250,627, filed on Dec. 1, 2000, entitled “Minimum Cost Path Search Algorithm Through Tile Obstacles,” naming Zhaoyun Xing and Russell Kao as inventors; andU.S. provisional patent application Ser. No. 60/309,672, filed on Aug. 2, 2001, entitled “Shortest Path Search Using Tiles and Piecewise Linear Cost Propagation,” naming Zhaoyun Xing and Russell Kao as inventors. This application also relates to the following patent applications which are filed on tue same day as the present application: U.S. patent application Ser. No. 09/999,558, entitled “Piecewise Linear Cost Propagation for Path Searching,” naming Zhaoyun Xing and Russell Kao as inventors, now U.S Pat. No. 6,665,852; and U.S. patent application Ser. No. 09/998,405, entitled “Systems and Method for Linear Minimal Convolution,” naming Zhaoyun Xing and Russell Kao as inventors. All of the above referenced patent applications (provisional and utility) are hereby incorporated by reference in their entirety.
Number | Name | Date | Kind |
---|---|---|---|
5511015 | Flockeneier | Apr 1996 | A |
5748844 | Marks | May 1998 | A |
5838583 | Varadarajan et al. | Nov 1998 | A |
5841664 | Cai et al. | Nov 1998 | A |
6175950 | Scepanovic et al. | Jan 2001 | B1 |
6182272 | Andreev et al. | Jan 2001 | B1 |
6230306 | Raspopovic et al. | May 2001 | B1 |
6292928 | Yamaguchi et al. | Sep 2001 | B1 |
6324674 | Andreev et al. | Nov 2001 | B1 |
6324675 | Dutta et al. | Nov 2001 | B1 |
6353918 | Carothers et al. | Mar 2002 | B1 |
6415427 | Nitta et al. | Jul 2002 | B1 |
6477692 | Marchenko et al. | Nov 2002 | B1 |
6665852 | Xing et al. | Dec 2003 | B1 |
6763512 | Jul 2004 | B1 | |
6792587 | Xing et al. | Sep 2004 | B1 |
20020104061 | Xing et al. | Aug 2002 | A1 |
Number | Date | Country | |
---|---|---|---|
20020107711 A1 | Aug 2002 | US |
Number | Date | Country | |
---|---|---|---|
60309672 | Aug 2001 | US | |
60250627 | Dec 2000 | US |