detectors/edgetpu: yolov8 support (#9782)

* detectors/edgetpu: add support for yolov8 models

* docs: edgetpu yolov8 running

* docs: edgetpu yolov8 attribution and language

* Update docs/docs/configuration/object_detectors.md

Co-authored-by: Nicolas Mowen <nickmowen213@gmail.com>

---------

Co-authored-by: Nicolas Mowen <nickmowen213@gmail.com>
This commit is contained in:
harakas 2024-02-10 21:39:28 +02:00 committed by GitHub
parent cad7cdfb7e
commit cd5f4b1534
No known key found for this signature in database
GPG Key ID: B5690EEEBB952194
2 changed files with 71 additions and 0 deletions

View File

@ -99,6 +99,58 @@ detectors:
device: pci
```
### Yolov8 On Coral
It is possible to use the [ultralytics yolov8](https://github.com/ultralytics/ultralytics) pretrained models with the Google Coral processors.
#### Setup
You need to download yolov8 model files suitable for the EdgeTPU. Frigate can do this automatically with the `DOWNLOAD_YOLOV8={0 | 1}` environment variable either from the command line
```bash
$ docker run ... -e DOWNLOAD_YOLOV8=1 \
...
```
or when using docker compose:
```yaml
services:
frigate:
...
environment:
DOWNLOAD_YOLOV8: "1"
```
When this variable is set then frigate will at startup fetch [yolov8.small.models.tar.gz](https://github.com/harakas/models/releases/download/yolov8.1-1.1/yolov8.small.models.tar.gz) and extract it into the `/config/model_cache/yolov8/` directory.
The following files suitable for the EdgeTPU detector will be available under `/config/model_cache/yolov8/`:
- `yolov8[ns]_320x320_edgetpu.tflite` -- nano (n) and small (s) sized models that have been trained using the coco dataset (90 classes)
- `yolov8[ns]-oiv7_320x320_edgetpu.tflite` -- model files that have been trained using the google open images v7 dataset (601 classes)
- `labels.txt` and `labels-frigate.txt` -- full and aggregated labels for the coco dataset models
- `labels-oiv7.txt` and `labels-oiv7-frigate.txt` -- labels for the oiv7 dataset models
The aggregated label files contain renamed labels leaving only `person`, `vehicle`, `animal` and `bird` classes. The oiv7 trained models contain 601 classes and so are difficult to configure manually -- using aggregate labels is recommended.
Larger models (of `m` and `l` size and also at `640x640` resolution) can be found at https://github.com/harakas/models/releases/tag/yolov8.1-1.1/ but have to be installed manually.
The oiv7 models have been trained using a larger google open images v7 dataset. They also contain a lot more detection classes (over 600) so using aggregate label files is recommended. The large number of classes leads to lower baseline for detection probability values and also for higher resource consumption (they are slower to evaluate).
#### Configuration
```yaml
model:
labelmap_path: /config/model_cache/yolov8/labels.txt
model_type: yolov8
detectors:
coral:
type: edgetpu
device: usb
model:
path: /config/model_cache/yolov8/yolov8n_320x320_edgetpu.tflite
```
## OpenVINO Detector
The OpenVINO detector type runs an OpenVINO IR model on Intel CPU, GPU and VPU hardware. To configure an OpenVINO detector, set the `"type"` attribute to `"openvino"`.

View File

@ -6,6 +6,7 @@ from typing_extensions import Literal
from frigate.detectors.detection_api import DetectionApi
from frigate.detectors.detector_config import BaseDetectorConfig
from frigate.detectors.util import yolov8_postprocess
try:
from tflite_runtime.interpreter import Interpreter, load_delegate
@ -54,11 +55,29 @@ class EdgeTpuTfl(DetectionApi):
self.tensor_input_details = self.interpreter.get_input_details()
self.tensor_output_details = self.interpreter.get_output_details()
self.model_type = detector_config.model.model_type
def detect_raw(self, tensor_input):
if self.model_type == "yolov8":
scale, zero_point = self.tensor_input_details[0]["quantization"]
tensor_input = (
(tensor_input - scale * zero_point * 255) * (1.0 / (scale * 255))
).astype(self.tensor_input_details[0]["dtype"])
self.interpreter.set_tensor(self.tensor_input_details[0]["index"], tensor_input)
self.interpreter.invoke()
if self.model_type == "yolov8":
scale, zero_point = self.tensor_output_details[0]["quantization"]
tensor_output = self.interpreter.get_tensor(
self.tensor_output_details[0]["index"]
)
tensor_output = (tensor_output.astype(np.float32) - zero_point) * scale
model_input_shape = self.tensor_input_details[0]["shape"]
tensor_output[:, [0, 2]] *= model_input_shape[2]
tensor_output[:, [1, 3]] *= model_input_shape[1]
return yolov8_postprocess(model_input_shape, tensor_output)
boxes = self.interpreter.tensor(self.tensor_output_details[0]["index"])()[0]
class_ids = self.interpreter.tensor(self.tensor_output_details[1]["index"])()[0]
scores = self.interpreter.tensor(self.tensor_output_details[2]["index"])()[0]