| Literature DB >> 34069318 |
Hao Wu1, Xuehua Tang2, Zhongyuan Wang1, Nanxi Wang1.
Abstract
Using personal trajectory information to grasp the spatiotemporal laws of dangerous activities to curb the occurrence of criminal acts is a new opportunity and method for security prevention and control. This paper proposes a novel method to discover abnormal behaviors and judge abnormal behavior patterns using mobility trajectory data. Abnormal behavior trajectory refers to the behavior trajectory whose temporal and spatial characteristics are different from normal behavior, and it is an important clue to discover dangerous behavior. Abnormal patterns are the behavior patterns summarized based on the regular characteristics of criminals' activities, including wandering, scouting, random walk, and trailing. This paper examines the abnormal behavior patterns based on mobility trajectories. A Long Short-Term Memory Network (LSTM)-based method is used to extract personal trajectory features, and the K-means clustering method is applied to extract abnormal trajectories from the trajectory dataset. Based on the characteristics of different abnormal behaviors, the spatio-temporal feature matching method is used to identify the abnormal patterns based on the filtered abnormal trajectories. Experimental results showed that the trajectory-based abnormal behavior discovery method can realize a rapid discovery of abnormal trajectories and effective judgment of abnormal behavior patterns.Entities:
Keywords: LSTM-based method; abnormal behavior pattern; mobility trajectory; spatiotemporal characteristic
Year: 2021 PMID: 34069318 PMCID: PMC8158690 DOI: 10.3390/s21103520
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1The overall flow of our method.
Figure 2Outlier point removal algorithm.
Figure 3The overview of our identification algorithm.
Figure 4Simulate data of direct, pacing, lapping and random.
Figure 5The heat map of the trajectory data in the real dataset.
Figure 6Determination of the cluster number using the elbow method.
Figure 7Accuracy comparisons by different thresholds .
Clustering performance on the simulated dataset.
| Result | Accuracy (Precision/Recall) | ||||
|---|---|---|---|---|---|
| Direct | Pacing | Lapping | Random | Total | |
| SSPD | 0.46/0.60 | 0.40/0.40 | 0.40/0.40 | 0.41/0.50 | 0.47 |
| LCSS | 0.37/0.60 | 0.25/0.40 | 0.31/0.50 | 0.25/0.40 | 0.47 |
| Hausdorff | 0.45/0.50 | 0.35/0.50 | 0.21/0.37 | 0.35/0.30 | 0.45 |
| Frechet | 0.75/0.30 | 0.31/0.50 | 0.35/0.60 | 0.25/0.40 | 0.45 |
| Discrete Frechet | 0.71/0.50 | 0.35/0.50 | 0.35/0.50 | 0.28/0.40 | 0.47 |
| ERP | 0.31/0.50 | 1.00/0.40 | 0.54/0.60 | 0.31/0.50 | 0.50 |
| DTW | 0.33/0.30 | 0.30/0.40 | 0.38/0.50 | 0.44/0.40 | 0.40 |
| EDR | 0.26/0.50 | 0.47/0.90 | 0.31/0.60 | 0.36/0.70 | 0.67 |
| Our Method | 1.00/0.87 | 0.89/0.98 | 0.99/0.98 | 0.98/1.00 | 0.96 |
Identification results of mobility behavior patterns for a single person.
| Result | Accuracy | |||
|---|---|---|---|---|
| Direct | Wandering | Scouting | Random Walk | |
| Precision | 0.88 | 0.77 | 0.73 | 0.66 |
| Recall | 0.44 | 0.98 | 0.48 | 0.50 |
Figure 8Examples of random, wandering, and scouting behavior identification.
Identification results of the trailing patterns.
|
| Accuracy | |
|---|---|---|
| Precision | Recall | |
| 0.75 | 0.88 | 0.77 |
| 0.80 | 0.86 | 0.74 |
| 0.85 | 0.83 | 0.70 |
| 0.90 | 0.78 | 0.65 |
Figure 9The example of trailing recognition.