| Literature DB >> 28257113 |
Fagui Liu1, Dacheng Deng2, Ping Li3.
Abstract
Event recognition in smart spaces is an important and challenging task. Most existing approaches for event recognition purely employ either logical methods that do not handle uncertainty, or probabilistic methods that can hardly manage the representation of structured information. To overcome these limitations, especially in the situation where the uncertainty of sensing data is dynamically changing over the time, we propose a multi-level information fusion model for sensing data and contextual information, and also present a corresponding method to handle uncertainty for event recognition based on Markov logic networks (MLNs) which combine the expressivity of first order logic (FOL) and the uncertainty disposal of probabilistic graphical models (PGMs). Then we put forward an algorithm for updating formula weights in MLNs to deal with data dynamics. Experiments on two datasets from different scenarios are conducted to evaluate the proposed approach. The results show that our approach (i) provides an effective way to recognize events by using the fusion of uncertain data and contextual information based on MLNs and (ii) outperforms the original MLNs-based method in dealing with dynamic data.Entities:
Keywords: Markov logic networks; dynamic uncertainty; event recognition; information fusion; sensing data
Year: 2017 PMID: 28257113 PMCID: PMC5375777 DOI: 10.3390/s17030491
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1Three-level information fusion model for event recognition.
Figure 2The layout of the storage with deployed sensors.
Typical events of a storage object.
| Event | State Transition | Description | |
|---|---|---|---|
| Transition between normal states | |||
| Violating the movement plan in the goods-in phase | |||
| Violating the movement plan in the inventorying phase | |||
| Violating the movement plan in the goods-out phase | |||
| Violating constraints on the temperature attribute | |||
| Violating constraints on the humidity attribute | |||
Figure 3A part of the information fusion model referring to formulas #1, #3, #4, #6 and #8–#10 in Table 2.
A Part of the knowledge base for event recognition in the scenario of logistic storage in FOL.
| # | Rules |
|---|---|
| 1 | |
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The performance of our MLNs-based method, HMM and CRF.
| HMM | MLNs | CRF | |
|---|---|---|---|
| Accuracy | 94.5% | 95.5% | 95.6% |
Figure 4Dynamic event recognition for high frequency events with respect to four scales, (a) Accuracy; (b) Precision; (c) Recall; (d) F-measure.
Figure 5Dynamic event recognition for low frequency events with respect to four scales, (a) Accuracy; (b) Precision; (c) Recall; (d) F-measure.