Seeed SenseCAP A1101 - LoraWAN Vision AI Sensor is an image recognition AI sensor designed for developers. SenseCAP A1101 - LoRaWAN Vision AI Sensor combines TinyML AI technology and LoRaWAN long-range transmission to enable a low-power, high-performance AI device solution for both indoor and outdoor use.
This sensor features Himax high-performance, low-power AI vision solution which supports the Google TensorFlow Lite framework and multiple TinyML AI platforms.
It is fully supported by Edge Impulse which means you will be able to sample raw data from the camera, build models, and deploy trained machine learning models to the module directly from the studio without any programming required. SenseCAP - Vision AI Module is available for purchase directly from Seeed Studio Bazaar.
To set A1101 up in Edge Impulse, you will need to install the following software:
On Linux:
GNU Screen: install for example via sudo apt install screen.
Download the latest Bouffalo Lab Dev Cube-All-Platform
Problems installing the Edge Impulse CLI?
See the Installation and troubleshooting guide.
With all the software in place, it's time to connect the A1101 to Edge Impulse.
BL702 is the USB-UART chip which enables the communication between the PC and the Himax chip. You need to update this firmware in order for the Edge Impulse firmware to work properly.
Get the latest bootloader firmware (tinyuf2-sensecap_vision_ai_xxx.bin.)
Connect the A1101 to the PC via a USB Type-C cable while holding down the Boot button on the A1101.
Open previously installed Bouffalo Lab Dev Cube software, select BL702/704/706, and then click Finish
Go to the MCU tab. Under Image file, click Browse and select the firmware you just downloaded.
Click Refresh, choose the Port related to the connected A1101, set Chip Erase to True, click Open UART, click Create & Download and wait for the process to be completed .
You will see the output as All Success if it went well.
If the flashing throws an error, click Create & Download multiple times until you see the All Success message.
A1101 does not come with the right Edge Impulse firmware yet. To update the firmware:
Download the latest Edge Impulse firmware and extract it to obtain firmware.uf2 file
Connect the A1101 again to the PC via USB Type-C cable and double-click the Boot button on the A1101 to enter mass storage mode
After this you will see a new storage drive shown on your file explorer as SENSECAP. Drag and drop the firmware.uf2 file to SENSECAP drive
Once the copying is finished SENSECAP drive will disappear. This is how we can check whether the copying is successful or not.
From a command prompt or terminal, run:
This will start a wizard which will ask you to log in, and choose an Edge Impulse project. If you want to switch projects run the command with --clean
.
Alternatively, recent versions of Google Chrome and Microsoft Edge can collect data directly from your A1101, without the need for the Edge Impulse CLI. See this blog post for more information.
That's all! Your device is now connected to Edge Impulse. To verify this, go to your Edge Impulse project, and click Devices. The device will be listed here.
Device connected to Edge Impulse correctly!
With everything set up, you can now build and run your first machine learning model with these tutorials:
Looking to connect different sensors? The Data forwarder lets you easily send data from any sensor into Edge Impulse.
Frames from the onboard camera can be directly captured from the studio:
Finally, once a model is trained, it can be easily deployed to the A1101 – Vision AI Module to start inferencing!
After building the machine learning model and downloading the Edge Impulse firmware from Edge Impulse Studio, deploy the model uf2 to SenseCAP - Vision AI by following steps 1 and 2 under Update Edge Impulse firmware
Drag and drop the firmware.uf2 file from EDGE IMPULSE to SENSECAP drive.
When you run this on your local interface:
it will ask you to click a URL, then you will see a live preview of the camera on your device.
If you want to compile the Edge Impulse firmware from the source code, you can visit this GitHub repo and follow the instructions included in the README.
The model used for the official firmware can be found in this public project.
In addition to connecting directly to a computer to view real-time detection data, you can also transmit these data through LoraWAN® and finally upload them to the SenseCAP cloud platform or a third-party cloud platform. On the SenseCAP cloud platform, you can view the data in a cycle and display it graphically through your mobile phone or computer. The SenseCAP cloud platform and SenseCAP Mate App use the same account system.
Since our focus here is on describing the model training process, we won't go into the details of the cloud platform data display. But if you're interested, you can always visit the SenseCAP cloud platform to try adding devices and viewing data. It's a great way to get a better understanding of the platform's capabilities!
You can get more information on how to use SenseCAP A1101 here
LoRaWAN® network coverage is required when using sensors, there are two options.
Seeed provides:
SenseCAP M2 for Helium network
SenseCAP M2 Multi-Platform for standard LoraWAN® network
If you have interests, please kindly click for more details.
Download SenseCAP Mate
Open SenseCAP Mate and login
Under Config screen, select Vision AI Sensor
Press and hold the configuration button on the SenseCap A1101 for 3 seconds to enter bluetooth pairing mode
Click Setup and it will start scanning for nearby SenseCAP A1101 devices- Go to Settings and make sure Object Detection and User Defined 1 is selected. If not, select it and click Send
Go to General and click Detect, you'll see the actual data here.
Click here to open a preview window of the camera stream
Click Connect button. Then you will see a pop up on the browser. Select SenseCAP Vision AI - Paired and click Connect
View real-time inference results using the preview window!
The cats are detected with bounding boxes around them. Here "0" corresponds to each detection of the same class. If you have multiple classes, they will be named as 0, 1, 2, 3, 4
and so on. Also the confidence score for each detected object (0.72 in above demo) is displayed!