--- comments: true description: Discover how to get started with Seeed Studio reCamera for edge AI applications using Ultralytics YOLO11. Learn about its powerful features, real-world applications, and how to export YOLO11 models to ONNX format for seamless integration. keywords: Seeed Studio reCamera, YOLO11, ONNX export, edge AI, computer vision, real-time detection, personal protective equipment detection, fire detection, waste detection, fall detection, modular AI devices, Ultralytics --- # Quick Start Guide: Seeed Studio reCamera with Ultralytics YOLO11 [reCamera](https://www.seeedstudio.com/recamera) was introduced for the AI community at [YOLO Vision 2024 (YV24)](https://www.youtube.com/watch?v=rfI5vOo3-_A), [Ultralytics](https://ultralytics.com/) annual hybrid event. It is mainly designed for edge AI applications, offering powerful processing capabilities and effortless deployment. With support for diverse hardware configurations and open-source resources, it serves as an ideal platform for prototyping and deploying innovative [computer vision](https://www.ultralytics.com/glossary/computer-vision-cv) [solutions](https://docs.ultralytics.com/solutions/#solutions) at the edge.  ## Why Choose reCamera? reCamera series is purpose-built for edge AI applications, tailored to meet the needs of developers and innovators. Here's why it stands out: - **RISC-V Powered Performance**: At its core is the SG200X processor, built on the RISC-V architecture, delivering exceptional performance for edge AI tasks while maintaining energy efficiency. With the ability to execute 1 trillion operations per second (1 TOPS), it handles demanding tasks like real-time object detection easily. - **Optimized Video Technologies**: Supports advanced video compression standards, including H.264 and H.265, to reduce storage and bandwidth requirements without sacrificing quality. Features like HDR imaging, 3D noise reduction, and lens correction ensure professional visuals, even in challenging environments. - **Energy-Efficient Dual Processing**: While the SG200X handles complex AI tasks, a smaller 8-bit microcontroller manages simpler operations to conserve power, making the reCamera ideal for battery-operated or low-power setups. - **Modular and Upgradable Design**: The reCamera is built with a modular structure, consisting of three main components: the core board, sensor board, and baseboard. This design allows developers to easily swap or upgrade components, ensuring flexibility and future-proofing for evolving projects. ## Quick Hardware Setup of reCamera Please follow [reCamera Quick Start Guide](https://wiki.seeedstudio.com/recamera_getting_started) for initial onboarding of the device such as connecting the device to a WiFi network and access the [Node-RED](https://nodered.org) web UI for quick previewing of detection results. ## Inference Using Pre-installed YOLO11 Models reCamera comes pre-installed with four Ultralytics YOLO11 models and you can simply choose your desired model within the Node-RED dashboard. - [Detection (YOLO11n)](../tasks/detect.md) - [Classification (YOLO11n-cls)](../tasks/classify.md) - [Segmentation (YOLO11n-seg)](../tasks/segment.md) - [Post Estimation (YOLO11n-pose)](../tasks/pose.md) Step 1: If you have connected reCamera to a network, enter the IP address of reCamera on a web browser to open the Node-RED dashboard. If you have connected the reCamera to a PC via USB, you can enter `192.168.42.1`. Here you will see YOLO11n detection model is loaded by default.  Step 2: Click the green color circle at the bottom right corner to access the Node-RED flow editor. Step 3: Click the `model` node and click `On Device`.  Step 4: Choose one of the four different pre-installed YOLO11n models and click `Done`. For example, here we will select `YOLO11n Pose`