Application of Deep Convolutional Neural Networks and Smartphone Sensors for Indoor Localization
Abstract
:1. Introduction
- A scene recognition model based on deep convolutional neural network is trained for indoor scene recognition in varying light conditions. The model is used to identify different floors and refines indoor localization accuracy. Tensorflow 1.12.0 is used to build and train the model. The accuracy of CNN is compared with support vector machines.
- An indoor localization approach is presented which utilizes the magnetic data from smartphone magnetic sensor to localize a pedestrian.
- Spatial proximity is considered to modify K nearest neighbor (KNN) which removes the distant neighbors and refines the current location of the pedestrian using the magnetic data.
- The proposed approach is tested on different smartphones and results are compared against other localization techniques to evaluate the impact of device dependence.
2. Related Work
3. Materials and Methods
3.1. Overview of Proposed Approach
3.2. Deep Convolutional Neural Network
3.3. Data Collection
3.4. Location Estimation
3.4.1. Scene Recognition
3.4.2. Magnetic Localization
Algorithm 1: Find user location |
Input: Recognized scene information () & magnetic samples () Output: User’s estimated location () 1: identify floor using 2: load magnetic database 3: set , and // Set the search space for database 4: for do 5: for do 6: 7: end for 8: // denotes number of neighbors 9: for do 10: 11: end for 12: 13: 14: end for |
3.5. Evaulation
4. Experiment and Results
4.1. Experiment Setup
4.2. CNN Classifier Performance
4.3. Performance of Indoor Localization
5. Discussion
6. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Class | CNN Accuracy | SVM Accuracy |
---|---|---|
0 | 0.942 | 0.890 |
1 | 0.925 | 0.880 |
2 | 0.920 | 0.800 |
3 | 0.912 | 0.880 |
4 | 0.887 | 0.740 |
5 | 0.854 | 0.710 |
6 | 0.953 | 0.910 |
7 | 0.924 | 0.880 |
8 | 0.957 | 0.899 |
9 | 0.870 | 0.760 |
10 | 0.901 | 0.843 |
11 | 0.890 | 0.820 |
12 | 0.882 | 0.810 |
13 | 0.928 | 0.846 |
14 | 0.913 | 0.808 |
Average 0.9104 | 0.8317 |
Method & Device | Mean Error | Standard Deviation | 50% Accuracy | 75% Accuracy |
---|---|---|---|---|
KNN-G6 | 1.86 | 1.44 | 1.53 | 2.88 |
mKNN-G6 | 1.46 | 1.23 | 1.08 | 2.22 |
KNN-S8 | 1.40 | 1.24 | 1.02 | 2.18 |
mKNN-S8 | 1.15 | 1.01 | 0.89 | 1.68 |
MFP-S8 with scene | 2.04 | 1.44 | 1.50 | 2.9 |
MFP-G6 with scene | 2.47 | 2.41 | 1.70 | 3.35 |
MFP-S8 without scene | 14.05 | 17.45 | 5.74 | 2.28 |
MFP-G6 without scene | 19.74 | 21.02 | 9.77 | 34.55 |
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Ashraf, I.; Hur, S.; Park, Y. Application of Deep Convolutional Neural Networks and Smartphone Sensors for Indoor Localization. Appl. Sci. 2019, 9, 2337. https://doi.org/10.3390/app9112337
Ashraf I, Hur S, Park Y. Application of Deep Convolutional Neural Networks and Smartphone Sensors for Indoor Localization. Applied Sciences. 2019; 9(11):2337. https://doi.org/10.3390/app9112337
Chicago/Turabian StyleAshraf, Imran, Soojung Hur, and Yongwan Park. 2019. "Application of Deep Convolutional Neural Networks and Smartphone Sensors for Indoor Localization" Applied Sciences 9, no. 11: 2337. https://doi.org/10.3390/app9112337
APA StyleAshraf, I., Hur, S., & Park, Y. (2019). Application of Deep Convolutional Neural Networks and Smartphone Sensors for Indoor Localization. Applied Sciences, 9(11), 2337. https://doi.org/10.3390/app9112337