Identification System for Electric Bicycle in Compartment Elevators
Abstract
1. Introduction
1.1. Related Works
1.1.1. Sensor-Based Elevator Detection Methods
1.1.2. Traditional Computer Vision Approaches
1.1.3. YOLO Series Advancements
1.1.4. Other Network Architectures
1.1.5. Edge Deployment Challenges
1.1.6. Research Context and Gap
1.2. Advantages of the Proposed Solution
2. Methods
2.1. Target Recognition Algorithm
2.2. Algorithmic Principles
2.2.1. Target Detection Output Representation
- (x,y): Normalized coordinates of the bounding box center relative to the grid cell.
- (w,h): Width and height of the bounding box, scaled to the image dimensions.
- Confidence Score: Probability of an object existing within the bounding box ([0, 1]).
- C: Class probability vector.
2.2.2. Loss Function
2.3. Deployment Adaptation
2.3.1. Model Quantization
2.3.2. Real-Time Inference
2.4. Upper Computer Development and Design
2.4.1. Core Features of Nezha Board
2.4.2. Summary of This Section
2.5. Development and Design of the Lower Computer
3. Experimental
3.1. Target Recognition Algorithm
3.2. Hyperparameter Settings and Training Strategies
3.3. Communication Design Between the Upper and Lower Computer
3.4. Comparative Experiments
3.5. Experiments on the Difference Between E-Bikes and Bicycles
3.6. Fault Tolerance Experiments
4. Results and Discussion
4.1. Target Recognition Experimental Results
4.2. Comparative Experiments Results
4.3. Hardware Experiment Analysis
4.4. Result of the Experiments on the Difference Between E-Bikes and Bicycles
5. Conclusions
5.1. Model Effectiveness and Hardware Acceleration
5.2. Cost–Benefit Analysis for Practical Implementation
5.2.1. Hardware and Implementation Costs
5.2.2. Operational Savings and Safety Benefits
6. Summary and Outlook
6.1. Summary of the Manuscript
6.2. Future Outlook
- Expanding the training dataset to include diverse hazard categories and fine-tuning the YOLOv11 model for multi-class classification.
- Introducing a hierarchical detection framework that prioritizes high-risk objects (e.g., electric bikes) while maintaining sensitivity to other hazards. For instance, integrating a lightweight multi-label classification module alongside the existing target detector.
- Leveraging transfer learning to minimize retraining costs, where the pre-trained YOLOv11 backbone is adapted for new hazard types with limited labeled data.
- Developing a distributed communication protocol for elevators across different floors, allowing real-time sharing of hazard detection results. For example, if an electric bike is detected on the 5th floor, adjacent elevators can preemptively activate warning mechanisms.
- Integrating floor-specific safety policies (e.g., high-rise buildings may require stricter control over lithium battery-carrying objects) through a centralized management system.
- Implementing dynamic path planning for elevators to avoid transporting hazardous items between floors, which can be achieved by modifying the STM32F103 control logic to accept floor-level coordination commands.
- Enable remote monitoring and real-time alerting for property managers, with detection data uploaded to a cloud server for analytics. This requires developing a secure API for data transmission between the Nezha board and cloud services (e.g., AWS IoT or Azure IoT).
- Utilize cloud-based machine learning for continuous model optimization. Historical detection data can be used to retrain YOLOv11 periodically, adapting to new hazard patterns (e.g., emerging e-bike models).
- Implement big data analysis to identify safety trends (e.g., peak hours for hazardous object entries), supporting proactive safety measures. For example, the cloud platform could generate weekly reports on elevator safety incidents for building administrators.
6.3. Privacy and Regulatory Considerations
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Category | Key Limitations | Impact on Elevator Safety |
---|---|---|
Sensor-based | Inability to visually confirm hazards; vulnerability to environmental interference (e.g., vibration) | High false alarm rate; potential miss-detection of e-bikes in complex poses |
Traditional CV | Poor adaptability to lighting changes; manual feature engineering lacks scalability | Inconsistent detection performance under varying elevator lighting conditions |
Deep Learning | Heavy models unsuitable for edge deployment; insufficient focus on e-bike detail features | High latency in real-time systems; frequent miss-detections in occluded scenarios |
Model | Detection Accuracy/% | mAP/% |
---|---|---|
YOLOv3 | 89.23 | 90.44 |
YOLOv8 | 91.7 | 80.10 |
AUGMIX-YOLOv8-org | 95.8 | 82.40 |
YOLOv11 | 96.0 | 92.61 |
Detection Transformer | 88.89 | 85.46 |
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Han, Y.; Wang, W. Identification System for Electric Bicycle in Compartment Elevators. Electronics 2025, 14, 2638. https://doi.org/10.3390/electronics14132638
Han Y, Wang W. Identification System for Electric Bicycle in Compartment Elevators. Electronics. 2025; 14(13):2638. https://doi.org/10.3390/electronics14132638
Chicago/Turabian StyleHan, Yihang, and Wensheng Wang. 2025. "Identification System for Electric Bicycle in Compartment Elevators" Electronics 14, no. 13: 2638. https://doi.org/10.3390/electronics14132638
APA StyleHan, Y., & Wang, W. (2025). Identification System for Electric Bicycle in Compartment Elevators. Electronics, 14(13), 2638. https://doi.org/10.3390/electronics14132638