Update sony-imx500.md (#17491)

Co-authored-by: Glenn Jocher <glenn.jocher@ultralytics.com>
pull/17499/head^2
Amir Servi 2 weeks ago committed by GitHub
parent 3682f01d12
commit 496e6a3b86
No known key found for this signature in database
GPG Key ID: B5690EEEBB952194
  1. 6
      docs/en/integrations/sony-imx500.md

@ -29,7 +29,7 @@ The IMX500 works with quantized models. Quantization makes models smaller and fa
**IMX500 Key Features:** **IMX500 Key Features:**
- **Metadata Output:** Instead of transmitting full images, the IMX500 outputs only metadata, minimizing data size, reducing bandwidth, and lowering costs. - **Metadata Output:** Instead of transmitting images only, the IMX500 can output both image and metadata (inference result), and can output metadata only for minimizing data size, reducing bandwidth, and lowering costs.
- **Addresses Privacy Concerns:** By processing data on the device, the IMX500 addresses privacy concerns, ideal for human-centric applications like person counting and occupancy tracking. - **Addresses Privacy Concerns:** By processing data on the device, the IMX500 addresses privacy concerns, ideal for human-centric applications like person counting and occupancy tracking.
- **Real-time Processing:** Fast, on-sensor processing supports real-time decisions, perfect for edge AI applications such as autonomous systems. - **Real-time Processing:** Fast, on-sensor processing supports real-time decisions, perfect for edge AI applications such as autonomous systems.
@ -247,7 +247,7 @@ Export to IMX500 format has wide applicability across industries. Here are some
## Conclusion ## Conclusion
Exporting Ultralytics YOLOv8 models to Sony's IMX500 format allows you to deploy your models for efficient inference on IMX500-based cameras. By leveraging advanced quantization and pruning techniques, you can reduce model size and improve inference speed without significantly compromising accuracy. Exporting Ultralytics YOLOv8 models to Sony's IMX500 format allows you to deploy your models for efficient inference on IMX500-based cameras. By leveraging advanced quantization techniques, you can reduce model size and improve inference speed without significantly compromising accuracy.
For more information and detailed guidelines, refer to Sony's [IMX500 website](https://developer.aitrios.sony-semicon.com/en/raspberrypi-ai-camera). For more information and detailed guidelines, refer to Sony's [IMX500 website](https://developer.aitrios.sony-semicon.com/en/raspberrypi-ai-camera).
@ -271,7 +271,7 @@ The export process will create a directory containing the necessary files for de
The IMX500 format offers several important advantages for edge deployment: The IMX500 format offers several important advantages for edge deployment:
- On-chip AI processing reduces latency and power consumption - On-chip AI processing reduces latency and power consumption
- Outputs metadata instead of full images, minimizing bandwidth usage - Outputs both image and metadata (inference result) instead of images only
- Enhanced privacy by processing data locally without cloud dependency - Enhanced privacy by processing data locally without cloud dependency
- Real-time processing capabilities ideal for time-sensitive applications - Real-time processing capabilities ideal for time-sensitive applications
- Optimized quantization for efficient model deployment on resource-constrained devices - Optimized quantization for efficient model deployment on resource-constrained devices

Loading…
Cancel
Save