| Literature DB >> 26334278 |
Rui Ma1, Qiang Guo2, Changzhen Hu3, Jingfeng Xue4.
Abstract
The rapid development of mobile Internet has offered the opportunity for WiFi indoor positioning to come under the spotlight due to its low cost. However, nowadays the accuracy of WiFi indoor positioning cannot meet the demands of practical applications. To solve this problem, this paper proposes an improved WiFi indoor positioning algorithm by weighted fusion. The proposed algorithm is based on traditional location fingerprinting algorithms and consists of two stages: the offline acquisition and the online positioning. The offline acquisition process selects optimal parameters to complete the signal acquisition, and it forms a database of fingerprints by error classification and handling. To further improve the accuracy of positioning, the online positioning process first uses a pre-match method to select the candidate fingerprints to shorten the positioning time. After that, it uses the improved Euclidean distance and the improved joint probability to calculate two intermediate results, and further calculates the final result from these two intermediate results by weighted fusion. The improved Euclidean distance introduces the standard deviation of WiFi signal strength to smooth the WiFi signal fluctuation and the improved joint probability introduces the logarithmic calculation to reduce the difference between probability values. Comparing the proposed algorithm, the Euclidean distance based WKNN algorithm and the joint probability algorithm, the experimental results indicate that the proposed algorithm has higher positioning accuracy.Entities:
Keywords: WiFi indoor positioning; location fingerprinting algorithm; weighted fusion
Year: 2015 PMID: 26334278 PMCID: PMC4610424 DOI: 10.3390/s150921824
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1Methodology of proposed algorithm.
Figure 2The fourth floor of software building layout.
Figure 3Prototype system framework.
Figure 4Distribution of collecting points.
WiFi signal collecting parameters.
| Parameters | Value | Comments |
|---|---|---|
| Kd and Kp | 4 | coming from experiment result |
| collecting spacing | 1 m | coming from paper [ |
| collecting frequency | 10 Hz | determined by the mobile device |
| collecting time | 10 s | determined by actual demands |
| number of points | 36 | determined by room size |
Figure 5The mobile client and one fingerprint.
Figure 6WiFi signal error handling.
Euclidean distance of two collections at the same position.
| MAC | Original | Processed | ||
|---|---|---|---|---|
| Rssi_avg1 | Rssi_avg2 | Rssi_pavg1 | Rssi_pavg2 | |
| 00:24:a5:b5:2c:39 | −88 | −86 | −87 | −86 |
| 3c:77:e6:25:fb:c9 | −89 | −86 | −88 | −86 |
| 50:bd:5f:29:43:fe | −81 | −79 | −81 | −79 |
| 60:6c:66:1c:d1:81 | −85 | −85 | −85 | −85 |
| 88:1d:fc:0b:0f:20 | −75 | −73 | −75 | −73 |
| 88:1d:fc:0b:0f:21 | −75 | −75 | −75 | −74 |
| 88:1d:fc:0b:28:90 | −75 | −75 | −75 | −75 |
| 88:1d:fc:0b:28:91 | −75 | −75 | −75 | −75 |
| 88:1d:fc:2c:30:c0 | −77 | −75 | −76 | −76 |
| 88:1d:fc:2c:30:c1 | −77 | −75 | −77 | −76 |
| 88:1d:fc:30:34:70 | −78 | −78 | −78 | −79 |
| 88:1d:fc:30:34:71 | −78 | −78 | −78 | −78 |
| 94:0c:6d:1a:62:3c | −79 | −79 | −79 | −79 |
| 9c:4e:36:c4:fe:a9 | −75 | −75 | −74 | −73 |
| ac:72:89:52:f4:41 | −86 | −88 | −86 | −88 |
| c0:61:18:fc:59:b8 | −86 | −85 | −86 | −85 |
| c0:61:18:fc:5c:76 | −78 | −77 | −78 | −77 |
| c8:3a:35:09:63:20 | −84 | −83 | −84 | −83 |
| c8:3a:35:12:1f:d0 | −91 | −100 | −91 | −100 |
| c8:3a:35:56:62:60 | −90 | −100 | −90 | −100 |
| cc:34:29:ff:1f:fa | −39 | −37 | −38 | −38 |
| d0:c7:c0:d3:d9:18 | −86 | −87 | −85 | −87 |
| ec:88:8f:65:49:a2 | −90 | −100 | −90 | −100 |
| f0:7d:68:97:05:9a | −69 | −69 | −70 | −69 |
| Euclidean distance | 17.94 | 17.61 | ||
Figure 7Feature of WiFi signal.
Figure 8Distribution of the error of 100 positioning.
Figure 9Probability distribution of 100 positioning.
Figure 10Average error of different K value.
Figure 11Average error of different collecting point’s spacing.
Figure 12WiFi signal strength in different human movement directions.