Claims
- 1. A method for estimating subject position comprising:
a collecting process for collecting a set of positional data of a subject; a modeling process for reconstructing phase space model of the positional data; and an estimating process for estimating a most possible position of the subject at a specific time on the basis of the reconstructed model.
- 2. The method of claim 1 wherein the subject's definition ranges from a person to a collective of people with mobility.
- 3. The method of claim 1 wherein the positional data is measured by systems such as a global positioning system and a mobile communication system.
- 4. The method of claim 1 wherein the positional data is derived directly and indirectly from measurement on collective movements of a subject.
- 5. The method of claim 1 wherein the positional data is derived from mobile communicating systems' records such as handover counters and location updating counters.
- 6. The method of claim 1 wherein said positional data is described in spatial and temporal coordinates.
- 7. The collecting process of claim 1 further comprising a step for smoothing said positional data by means of an interpolation method to approximate the subject's positional data with a fixed time interval.
- 8. The method of claim 1 further comprising a step for dynamically updating said reconstructed model with new positional data.
- 9. The smoothing step of claim 8 further comprising a means for rectifying problems caused by missing data due to conditions such as communication blocks and positioning system being offline.
- 10. The modeling process of claim 1 comprising the steps of:
a time delay T evaluation; an embedding dimension D evaluation; and a phase space model reconstruction according to Takens' Embedding Theorem on the basis of said time delay T and said embedding dimension D.
- 11. The process of claim 10 wherein said time delay T evaluation is derived from methods with similar purpose to the calculation of the average mutual information based on said subject position data sampled with a fixed time interval.
- 12. The process of claim 10 wherein said embedding dimension D evaluation is derived from methods with similar purpose to singular value decomposition (SVD) based on said positional data sampled with a fixed time interval.
- 13. The method of claim 10 wherein said reconstructed model most preferably represents a phase characteristic of the evolution pattern embedded in said positional data.
- 14. The estimating process as claimed in claim 1 comprising the steps of:
a. selecting a data vector yk on a reconstructed phase space model which is derived from the positional data over a certain period of time; b. selecting a plurality of a neighboring vector x on another trajectory passing through a neighbor space of the data vector yk according to the reconstructed model on the basis of a selecting reference that the Euclidean distance thereof is smaller than a predetermined value; c. selecting a plurality of the next vector F(x,k) on the trajectory passing through the vector x according to the reconstructed model; d. evaluating the next vector yk+1 on the basis of the average trend from a plurality of x to their next vector F(x,k); e. replacing yk with yk+1 and repeating steps b to d until a data vector yk of a target time T+s is obtained, where |nT|<=|s|<=|(n+1)T|; and f. calculating the target y(T+s) by means of interpolation between yk+n and yk+n+1.
- 15. The process of claim 14 wherein said next vector yk+n provides the estimated position of the subject in the future when n is a positive integer.
- 16. The process of claim 14 wherein said next vector yk+n provides the estimated position of the subject in the past when n is a negative integer.
- 17. The process of claim 14 further comprising a step for displaying the estimated value y(T+s).
- 18. A method for compressing positional data of a subject comprising the steps of:
collecting a set of positional data of a subject; reconstructing the phase space model of the positional data; calculating a plurality of a mapping matrix c(k,m) from x to F(x,k); and storing each x and a correspondent c(k,m) of the collected data.
- 19. The reconstructed model of claim 18 most preferably represents a phase characteristic of the evolution pattern embedded in the collected data.
- 20. A method as claimed in claim 18 further comprising the uncompressing steps of:
a. reading all the x and their related c(m,k) from the stored file; b. reading the starting point yk from the stored file; c. selecting a plurality of a neighboring vector x on another trajectory passing through a neighbor space of the data vector yk according to the reconstructed model on the basis of a selecting reference that the Euclidean distance thereof is smaller than a predetermined value; d. selecting a plurality of the next vector F(x,k) on the trajectory passing through the vector x according to the reconstructed model; e. evaluating the next vector yk+n on the basis of the average trend from a plurality of x to their next vector F(x,k); f. replacing yk with yk+n and repeating steps c to e until all the data are recovered.
- 21. The process of claim 20 wherein said next vector yk+n provides the uncompressed position of the subject in the future when n is +1.
- 22. The process of claim 20 wherein said next vector yk+n provides the uncompressed position of the subject in the past when n is −1.
CROSS-REFERENCE TO RELATED APPLICATIONS
[0001] This application is entitled to the priority benefit of Provisional Patent Application Ser. No. 60/287,749, filed on May 02, 2001.
Provisional Applications (1)
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Number |
Date |
Country |
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60287749 |
May 2001 |
US |