One Metre Plus (1M+): A Multifunctional Open-Source Sensor for Bicycles Based on Raspberry Pi
Abstract
:1. Introduction
2. Review of Instrumented Bicycles for Measuring Lateral Distance Passing
2.1. Why Develop an Open-Source Product?
2.2. Devices for Measuring Lateral Passing Distance: A Brief Overview
3. Material and Methods
3.1. Preliminary Assessment
3.2. Electronic Devices
3.3. Connection Diagram
- An HW 775 (Makerfocus, China) card which manages charging and discharging of the device and also protects the system from eventual electrical peaks.
- Four lithium Pkcell batteries (Shenzhen, Hong Kong, China) of 2200 mAh each for a total of 8800 mAh (approximately seven hours of continuous recording).
- A sealed Twidec switch (Suzhou, China) to allow the current to be conducted to the device as a whole.
- A sealed micro Cerrxian USB port (China) to recharge the batteries and to which it is also possible to connect Power Banks to increase autonomy during a data collection session.
- The tactile screen as a collection device for user commands.
- The DS3231 RTC clock which memorizes the time and transmits it to the Raspberry pi, the latter being directly welded to the superior pins of the nano computer.
- Finally, the hub zero USB is the connection bridge between the devices from 3 USB adaptors toward ttl, one last USB micro port is available to download the collected files during the bicycle trips.
3.4. Software
- For the distance sensor, a CSV file including the time (in milliseconds) of the event and the distance in centimetres.
- For the GPS, a CSV file with the time (in milliseconds) and the coordinates of the geographical position (longitude and latitude).
- For the fish-eye camera, a file of h.264 format.
3.5. Product Design and 3D Modeling
3.6. User Interface
3.7. Data Collection
4. Results
4.1. Spatial Observations
4.2. Camera Resolution
4.3. Distance Measures by Vehicle
4.4. Technical Data—Product Characteristics
5. Discussion
5.1. Comparison with Previous Devices
5.2. Limits of the Sensor and Potential Improvements
- A microphone to record the video with the environmental sound.
- A Bluetooth speedometer (with a sensor attached to the wheel) to accurately measure speed and distance.
- Gyroscopes and accelerometers to measure cyclist stability during the overtaking manoeuvre.
- A push-button that allows the cyclist to identify dangerous manoeuvres or other conflicts. This could be useful to evaluate differences between perceived and real risks.
5.3. Contribution to Research
6. Conclusions
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Acknowledgments
Conflicts of Interest
References
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Distance Sensor | GPS | Camera | Product | Product | |||||
---|---|---|---|---|---|---|---|---|---|
Study (Year) | Product | Hz | Range Distance (m) | Product | Hz | Product | Resolution(px) | Additional Device | Type and Cost ($US) of the Final Product |
Parkin et al. (2010) [32] | NA | NA | NA | NA | NA | Helmet Camcorder Generation 5 (Archos, Igny, France) | 640 × 480 | Archos 605 MP4 recording device (Archos, Igny, France) | Multiple existing devices. 600 $US |
Stewart et McHale (2014) [40] | NA | NA | NA | NA | NA | AT1 and ATC5K Waterproof Action Camera (Oregon Scientific, Portland, OR, USA) | 640 × 480 | NA | Multiple existing devices. 150 $US |
Shackel et al. (2014) [29] | M-300/95 Sensor (Massa, Hingham, MA, USA) | 95,000 | 0.3–4 | NA | NA | Viosport POV 1.5 camera × 2 (V.I.O, New Hope, PA, USA) | 720 × 480 (30 fps) | Laser pointer for distance from the kerb | Multiple existing devices.Price: NA |
Chuang et al. (2013) [28] | MB1200 XL-MaxSonar-EZ0 × 2 (Maxbotix Inc., Brainerd, MN, USA) | 60–70 | 0–6.5 | GPS (Canmore Electronics Co Ltd. Jhubei, Hsin Chu, Taiwan) | 1 | Car camera DVR black box × 5 (DOD Tech Co Ltd., Taoyuan, Taiwan) | 860 × 640 (30 fps) | Multi-function logger PhidgetSpatial Precision 3/3/3 (Phidgets Inc., Calgary, AB, Canada) | Multiple existing devices. 1290 $US |
Dozza et al. (2016) [31] | LIDAR system UXM-30LXH-EWA (Hokuyo, Osaka, Japan) | 20 | ND | ND | 1 | ND | 1920 × 1080 (30 fps) | NA | Multiple existing devices. 5980 $US |
Llorca et al. (2017) [33] | TruSense S200 Laser Sensor × 2 (Laser Technology Inc., Centennial, CO, USA) | 55,000 | 0.5–750 | Video VBOX waterproof 10 HZ gps data logger (Racelogic, Buckingham, UK) | 10 | Video VBOX waterproof 10 HZ gps data logger (Racelogic, Buckingham, UK) with 3 cameras | ND | TrueSense T100 (Laser Technology Inc., Centennial, CO, USA) for measure the speed of overtaking vehicles. | Multiple existing devices. 3695 $US |
Walker et al. (2014) [30] | MB1200 XL-MaxSonar-EZ0 (Maxbotix Inc., Brainerd, MN, USA) | 10 | ND | NA | NA | NA | NA | Arduino Uno (Arduino, Scarmagno, Italy) | Custom-made. 120 $US |
Mehta et al. (2015) [34] | ND | 10 | 0.3–4.8 | ND | ND | Camera lateral (type not defined) | ND | NA | Custom-made. Price: NA |
Beck et al. (2019) [27] | MB1230 XL-MaxSonar-EZ3 (Maxbotix Inc., Brainerd, MN, USA) | 10 | 0–3.3 | Adafruit Ultimate GPS FeatherWing (Adafruit Industries, New York, NY, USA) | 1 | GoPro Hero 5 Session (GoPro, CA, USA) in the handlebar | ND | NA | Custom-made. Price: 693 $US |
Device | Model | Manufacturer | Specifications | Quantity | Price (US) |
---|---|---|---|---|---|
Screen touch | NX3224T024 | Nextion (Shenzhen, Hong Kong, China) | Resolution: 320 × 240 px | 1 | 30 |
Color: 65,536 colors | |||||
Voltage: 5 V | |||||
Distance sensor | Tfmini plus micro lidar | Benewake (Beijing, China) | Range: 0.1–12 m | 1 | 60 |
Frequency: 100 Hz | |||||
Resolution: 1 cm | |||||
Accuracy: ±5 cm (0.1–5 m); ±1% (5–12 m) | |||||
Voltage: 5 V | |||||
GPS | BN-220 | Beitian (Shenzhen, Hong Kong, China) | Frequency: 1 Hz | 1 | 16 |
Accuracy: 2 m in horizontal position | |||||
Voltage: 5 V | |||||
Small single board computer | Raspberry Pi Zero W | Raspberry Pi Foundation (Cambridge, UK) | Memory: 512 MB RAM | 1 | 30 |
Connectivity: Bluetooth and Wifi | |||||
Processor: 1 GHz single-core CPU | |||||
Voltage: 3.3 V | |||||
Hub usb | Hub zero w-BH10128PSU | Makerspot | Socket type: 4 port USB | 1 | 17 |
Camera | RPi Camera G | Waveshare (Shenzhen, Hong Kong, China) | Field of view: 160 degrees | 1 | 25 |
Sensor resolution: Max 1080 p | |||||
Aperture (F): 2.35 | |||||
Voltage: 3.3 V | |||||
Battery Charger | HW-775 | Makerfocus (China) | Charging current: 0–2.1 A | 1 | 15 |
Discharge current: 0–2.4 A | |||||
Input voltage: 5 V | |||||
Output voltage: 3.7–5 V | |||||
Waterproof Cable micro-USB | Micro USB mount extension | Cerrxian (China) | Connector: Micro USB male/female | 1 | 15 |
SD Card | EVO Select micro SDXC 64 Gb | Samsung (Seoul, South Korea) | Capacity: 64 GB | 1 | 15 |
Clock | DS3231 Real time clock | Daoki (China) | Voltage: 3.3 V or 5 V | 1 | 4 |
time accuracy: ±0.4 s/day | |||||
Waterproof switch | Round Rocker Switch Blue | Twidec (Suzhou, China) | Voltage: 12 V | 1 | 3 |
Current: 20 A | |||||
Battery | 3.7 V Li-ion 18650 | Pkcell (Shenzhen, Hong Kong, China) | Voltage: 3.7 V | 4 | 22 |
Nominal Capacity: 2200 mAh | |||||
Usb to ttl connector | CP 2102 | Izokee (China) | Output Voltage: 3.3 or 5 V | 2 | 20 |
Communication protocol: UART | |||||
Usb to ttl connector | RS232 | Robojax (China) | Output Voltage: 3.3 or 5 V | 1 | 10 |
Communication protocol: UART | |||||
Total: | 292 |
Element | Size (High, Width and Depth in mm) | Time of Printing | Material Quantity (g) |
---|---|---|---|
Top cover | 105 × 120 × 34 | 15 h 40 min | 128 |
Bottom case | 113 × 122 × 62 | 28 h 43 min | 213 |
Raspberry pi support | 92 × 6 × 32 | 6 h 23 min | 39 |
Distance sensor support | 35 × 14 × 26.5 | ||
Camera support | 38 × 17.5 × 25 | ||
Touch screen support | 80 × 61 × 6 | ||
Charger support | 24 × 17 × 3 |
File | Distance File | GPS File | Video File | |||
---|---|---|---|---|---|---|
Size (KB) | Size (KB) | Resolution (px) | Size H264 (KB) | Size MP4 (KB) | Duration (mm:ss) | |
ID1_C1_2021_06_08_08_14_39 | 841 | 156 | 960 × 540 | 4,027,668 | 4,028,034 | 52:36 |
ID1_C1_2021_06_08_09_29_01 | 633 | 154 | 720 × 405 | 3,226,752 | 3,227,105 | 52:06 |
ID2_C2_2021_06_08_08_19_49 | 1081 | 169 | 960 × 540 | 3,789,376 | 3,789,765 | 56:48 |
ID2_C2_2021_06_08_09_33_16 | 794 | 169 | 480 × 270 | 985,284 | 985,639 | 57:00 |
Charge | Distance Sensor | ||
---|---|---|---|
Charging voltage | 5 V | Range (adjustable) | 2 cm–400 cm |
Charging current | 2 A | Capture frequency (adjustable) | 30–40 Hz |
Battery | GPS | ||
Capacity | 8800 mAh | Horizontal resolution | 2 m |
Technology | Li-ion | Capture frequency (adjustable) | 1 Hz |
Operation voltage | 3.7 V | Global system | |
Operation current | 1 A | Maximum operation time | 7 h of continuous recording |
Camera | Operating System | Raspberry Pi OS (32 bit) | |
Angle | 160 degrees | Wifi | 802.11 b/g/n |
Resolution, by default Large (adjustable) | - Low (426 × 240 px) - Medium (768 × 432 px) - Large (960 × 540 px) | Bluetooth | v4.1 BLE standard |
Aperture (F) | 2.35 | CPU | 1 GHz single-core |
Format | h.264 and mp4 | RAM | 512 MB |
Framerate (adjustable) | 25 fps | Spirit Level | Integrated |
Distance Sensor | GPS | Camera | Technology | |||||
---|---|---|---|---|---|---|---|---|
Study (Year) | Feature | Hz | Range Distance (m) | Feature | Hz | Feature | Resolution | |
Walker et al. (2014) [30] | √ | 10 | ND | x | NA | x | NA | Custom made: Grey plastic box and commercial devices |
Mehta et al. (2015) [34] | √ | 10 | 0.3–4.8 | √ | ND | √ (not integrated) | ND | Custom made: Grey plastic box and commercial devices |
Beck et al. (2019) [27] | √ | 10 | 0.3–3.3 | √ | 1 | √ (not integrated) | 3840 × 2160 | Custom made: 3D printing and commercial devices |
Codaxus C3FT v3 | √ | 10 | 0–2.5 | x | NA | x | NA | Standard product. |
1m+ sensor | √ | 60 | 0.1–12 | √ | 1 | √ | Max 1920 × 1080 | Custom made: 3D printing and commercial devices |
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Henao, A.; Apparicio, P.; Maignan, D. One Metre Plus (1M+): A Multifunctional Open-Source Sensor for Bicycles Based on Raspberry Pi. Sensors 2021, 21, 5812. https://doi.org/10.3390/s21175812
Henao A, Apparicio P, Maignan D. One Metre Plus (1M+): A Multifunctional Open-Source Sensor for Bicycles Based on Raspberry Pi. Sensors. 2021; 21(17):5812. https://doi.org/10.3390/s21175812
Chicago/Turabian StyleHenao, Andres, Philippe Apparicio, and David Maignan. 2021. "One Metre Plus (1M+): A Multifunctional Open-Source Sensor for Bicycles Based on Raspberry Pi" Sensors 21, no. 17: 5812. https://doi.org/10.3390/s21175812