RF-DETR: Optimized for Qualcomm Devices
DETR is a machine learning model that can detect objects (trained on COCO dataset).
This is based on the implementation of RF-DETR found here. This repository contains pre-exported model files optimized for Qualcomm® devices. You can use the Qualcomm® AI Hub Models library to export with custom configurations. More details on model performance across various devices, can be found here.
Qualcomm AI Hub Models uses Qualcomm AI Hub Workbench to compile, profile, and evaluate this model. Sign up to run these models on a hosted Qualcomm® device.
Getting Started
There are two ways to deploy this model on your device:
Option 1: Download Pre-Exported Models
Below are pre-exported model assets ready for deployment.
| Runtime | Precision | Chipset | SDK Versions | Download |
|---|---|---|---|---|
| ONNX | float | Universal | QAIRT 2.45, ONNX Runtime 1.26.0 | Download |
| QNN_DLC | float | Universal | QAIRT 2.45 | Download |
For more device-specific assets and performance metrics, visit RF-DETR on Qualcomm® AI Hub.
Option 2: Export with Custom Configurations
Use the Qualcomm® AI Hub Models Python library to compile and export the model with your own:
- Custom weights (e.g., fine-tuned checkpoints)
- Custom input shapes
- Target device and runtime configurations
This option is ideal if you need to customize the model beyond the default configuration provided here.
See our repository for RF-DETR on GitHub for usage instructions.
Model Details
Model Type: Model_use_case.object_detection
Model Stats:
- Model checkpoint: RF-DETR-small
- Input resolution: 512x512
- Supported variants: nano (384x384), small (512x512), medium (576x576), base (560x560)
- Number of parameters: 28.5M
- Model size (float): 109 MB
Performance Summary
| Model | Runtime | Precision | Chipset | Inference Time (ms) | Peak Memory Range (MB) | Primary Compute Unit |
|---|---|---|---|---|---|---|
| RF-DETR | ONNX | float | Snapdragon® 8 Gen 3 Mobile | 31.335 ms | 0 - 411 MB | NPU |
| RF-DETR | ONNX | float | Snapdragon® 8 Gen 1 Mobile | 99.133 ms | 0 - 417 MB | NPU |
| RF-DETR | ONNX | float | Qualcomm® QCS8550 (Proxy) | 41.923 ms | 6 - 351 MB | NPU |
| RF-DETR | ONNX | float | Qualcomm® QCS8450 | 99.133 ms | 0 - 417 MB | NPU |
| RF-DETR | ONNX | float | Snapdragon® 8 Elite Mobile | 24.084 ms | 11 - 330 MB | NPU |
| RF-DETR | ONNX | float | Qualcomm® QCS9075 | 51.038 ms | 11 - 17 MB | NPU |
| RF-DETR | ONNX | float | Snapdragon® 8 Elite Gen 5 Mobile | 20.144 ms | 11 - 365 MB | NPU |
| RF-DETR | ONNX | float | Qualcomm® QCS8750 | 24.084 ms | 11 - 330 MB | NPU |
| RF-DETR | QNN_DLC | float | Snapdragon® X2 Elite | 25.09 ms | 3 - 3 MB | NPU |
| RF-DETR | QNN_DLC | float | Snapdragon® X Elite | 50.9 ms | 3 - 3 MB | NPU |
| RF-DETR | QNN_DLC | float | Snapdragon® 8 Gen 3 Mobile | 36.319 ms | 0 - 468 MB | NPU |
| RF-DETR | QNN_DLC | float | Snapdragon® 8 Gen 1 Mobile | 99.489 ms | 3 - 474 MB | NPU |
| RF-DETR | QNN_DLC | float | Qualcomm® QCS8275 | 135.426 ms | 1 - 358 MB | NPU |
| RF-DETR | QNN_DLC | float | Qualcomm® QCS8550 (Proxy) | 50.554 ms | 3 - 382 MB | NPU |
| RF-DETR | QNN_DLC | float | Qualcomm® SA8775P | 56.732 ms | 1 - 383 MB | NPU |
| RF-DETR | QNN_DLC | float | Qualcomm® SA8650P | 56.732 ms | 1 - 383 MB | NPU |
| RF-DETR | QNN_DLC | float | Qualcomm® SA8255P | 56.732 ms | 1 - 383 MB | NPU |
| RF-DETR | QNN_DLC | float | Qualcomm® QCS8450 | 99.489 ms | 3 - 474 MB | NPU |
| RF-DETR | QNN_DLC | float | Snapdragon® 8 Elite Mobile | 28.877 ms | 3 - 412 MB | NPU |
| RF-DETR | QNN_DLC | float | Qualcomm® SA8295P | 81.477 ms | 0 - 360 MB | NPU |
| RF-DETR | QNN_DLC | float | Qualcomm® QCS9075 | 57.505 ms | 5 - 10 MB | NPU |
| RF-DETR | QNN_DLC | float | Snapdragon® 8 Elite Gen 5 Mobile | 23.528 ms | 3 - 406 MB | NPU |
| RF-DETR | QNN_DLC | float | Qualcomm® SA7255P | 135.426 ms | 1 - 358 MB | NPU |
| RF-DETR | QNN_DLC | float | Qualcomm® QCS8750 | 28.877 ms | 3 - 412 MB | NPU |
| RF-DETR | QNN_DLC | float | Qualcomm® QCS7181 | 50.9 ms | 3 - 3 MB | NPU |
License
- The license for the original implementation of RF-DETR can be found here.
References
Community
- Join our AI Hub Slack community to collaborate, post questions and learn more about on-device AI.
- For questions or feedback please reach out to us.
