Abstract

Group detection is gaining popularity as it enables variousXzX applications ranging from marketing to urban planning. Existing methods use received signal strength indicator (RSSI) to detect co-located people as groups. However, this approach might have difficulties in crowded urban spaces since many strangers with similar mobility patterns could be identified as groups. Moreover, RSSI is vulnerable to many factors like the human body attenuation and thus is unreliable in crowded scenarios. In this work, we propose a behavior-aware group detection system (BaG). BaG fuses people’s mobility information and smartphone usage behaviors. We observe that people in a group tend to have similar phone usage patterns. Those patterns could be effectively captured by the proposed feature: number of bursts (NoB). Unlike RSSI, NoB is more resilient to environmental changes as it only cares about receiving packets or not. Besides, both mobility and usage patterns correspond to the same underlying grouping information. We propose a detection method based on collective matrix factorization to reveal the hidden associations by factorizing mobility information and usage patterns simultaneously. Experimental results indicate BaG outperforms baseline approaches by <inline-formula><tex-math notation="LaTeX">$3.97\% \sim 15.79\%$</tex-math></inline-formula> in F-score. The proposed system could also achieve robust and reliable performance in scenarios with different levels of crowdedness.

Highlights

  • Group detection plays an important role in many applications including marketing [29], healthcare [22, 35], and urban planning [3, 39]

  • We ask the following question: can we reliably detect groups with WiFi probes in crowded urban spaces? In this paper, we provide an affirmative answer by proposing a Behavior-aware Group detection (BaG) system that integrates both mobility information and phone usage behaviors

  • We propose a new group detection method (SCNMF) that fuses mobility and behaviors and derives the grouping results without extra clustering processes

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Summary

INTRODUCTION

Group detection plays an important role in many applications including marketing [29], healthcare [22, 35], and urban planning [3, 39]. Two strangers might walk closely along an aisle This indicates detecting co-located people as a group in crowded areas is error-prone. We provide an affirmative answer by proposing a Behavior-aware Group detection (BaG) system that integrates both mobility information and phone usage behaviors. We contribute a new feature (number of bursts, NoB) extracted from WiFi probes that could effectively capture phone usage patterns. We introduce a new improvement of group detection in crowded environments: phone usage behaviors. A new feature (NoB) is extracted from WiFi probes that could effectively capture phone usage behaviors. We propose a new group detection method (SCNMF) that fuses mobility and behaviors and derives the grouping results without extra clustering processes. We conclude this paper and introduce the future work in the last section

PRELIMINARIES
SYSTEM DESIGN
Data Collection
Data Filtering
User Partition
Cluster 1 2 Cluster 2
Feature Extraction
Group Detection
Settings
G Graph Approach
Precision 2 Recall 3 F-score
Evaluation
RELATED WORK
CONCLUSION
Full Text
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