Add support for RKNN

This commit is contained in:
MarcA711 2023-10-27 11:23:17 +00:00
parent 1a9e00ee49
commit b81fa640f1
4 changed files with 110 additions and 0 deletions

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@ -90,6 +90,10 @@ RUN /bin/mkdir -p '/usr/local/lib' && \
/usr/bin/install -c -m 644 libusb-1.0.pc '/usr/local/lib/pkgconfig' && \ /usr/bin/install -c -m 644 libusb-1.0.pc '/usr/local/lib/pkgconfig' && \
ldconfig ldconfig
# Download libs needed for RKNN
FROM wget AS rknn-deps
RUN wget -P /rknn-lib https://github.com/rockchip-linux/rknpu2/raw/master/runtime/RK3588/Linux/librknn_api/aarch64/librknnrt.so
FROM wget AS models FROM wget AS models
# Get model and labels # Get model and labels
@ -159,6 +163,7 @@ FROM scratch AS deps-rootfs
COPY --from=nginx /usr/local/nginx/ /usr/local/nginx/ COPY --from=nginx /usr/local/nginx/ /usr/local/nginx/
COPY --from=go2rtc /rootfs/ / COPY --from=go2rtc /rootfs/ /
COPY --from=libusb-build /usr/local/lib /usr/local/lib COPY --from=libusb-build /usr/local/lib /usr/local/lib
COPY --from=rknn-deps /rknn-lib /usr/lib
COPY --from=s6-overlay /rootfs/ / COPY --from=s6-overlay /rootfs/ /
COPY --from=models /rootfs/ / COPY --from=models /rootfs/ /
COPY docker/main/rootfs/ / COPY docker/main/rootfs/ /

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@ -72,6 +72,12 @@ if [[ "${TARGETARCH}" == "arm64" ]]; then
libva-drm2 mesa-va-drivers libva-drm2 mesa-va-drivers
fi fi
# Needed for RKNN
if [[ "${TARGETARCH}" == "arm64" ]]; then
apt-get -qq install --no-install-recommends --no-install-suggests -y \
gcc
fi
apt-get purge gnupg apt-transport-https xz-utils -y apt-get purge gnupg apt-transport-https xz-utils -y
apt-get clean autoclean -y apt-get clean autoclean -y
apt-get autoremove --purge -y apt-get autoremove --purge -y

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@ -26,3 +26,6 @@ ws4py == 0.5.*
# Openvino Library - Custom built with MYRIAD support # Openvino Library - Custom built with MYRIAD support
openvino @ https://github.com/NateMeyer/openvino-wheels/releases/download/multi-arch_2022.3.1/openvino-2022.3.1-1-cp39-cp39-manylinux_2_31_x86_64.whl; platform_machine == 'x86_64' openvino @ https://github.com/NateMeyer/openvino-wheels/releases/download/multi-arch_2022.3.1/openvino-2022.3.1-1-cp39-cp39-manylinux_2_31_x86_64.whl; platform_machine == 'x86_64'
openvino @ https://github.com/NateMeyer/openvino-wheels/releases/download/multi-arch_2022.3.1/openvino-2022.3.1-1-cp39-cp39-linux_aarch64.whl; platform_machine == 'aarch64' openvino @ https://github.com/NateMeyer/openvino-wheels/releases/download/multi-arch_2022.3.1/openvino-2022.3.1-1-cp39-cp39-linux_aarch64.whl; platform_machine == 'aarch64'
# RKNN-Toolkit-Lite2
hide-warnings == 0.17 # required to supress warnings from RKNNLite
rknn-toolkit-lite2 @ https://github.com/rockchip-linux/rknn-toolkit2/raw/master/rknn_toolkit_lite2/packages/rknn_toolkit_lite2-1.5.2-cp39-cp39-linux_aarch64.whl; platform_machine == 'aarch64'

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@ -0,0 +1,96 @@
import logging
import numpy as np
import cv2
import cv2.dnn
from hide_warnings import hide_warnings
from frigate.detectors.detection_api import DetectionApi
from frigate.detectors.detector_config import BaseDetectorConfig
from typing import Literal
from pydantic import Field
logger = logging.getLogger(__name__)
DETECTOR_KEY = "rknn"
class RknnDetectorConfig(BaseDetectorConfig):
type: Literal[DETECTOR_KEY]
core_mask: int = Field(default=0, ge=0, le= 7, title="Core mask for RKNN.")
score_thresh: float = Field(default=0.5, ge=0, le= 1, title="Minimal confidence for detection.")
nms_thresh: float = Field(default=0.45, ge=0, le= 1, title="IoU threshold for non-maximum suppression.")
class Rknn(DetectionApi):
type_key = DETECTOR_KEY
def __init__(self, config: RknnDetectorConfig):
self.height = config.model.height
self.width = config.model.width
self.score_thresh = config.score_thresh
self.nms_thresh = config.nms_thresh
self.model_path = config.model.path or "/models/rknn/yolov8m-320x320.rknn"
self.core_mask = config.core_mask
from rknnlite.api import RKNNLite
self.rknn = RKNNLite(verbose=False)
if self.rknn.load_rknn(self.model_path) != 0:
logger.error('Error initializing rknn model.')
if self.rknn.init_runtime(core_mask=self.core_mask) != 0:
logger.error('Error initializing rknn runtime.')
def __del__(self):
self.rknn.release()
def postprocess(self, results):
"""
Processes yolov8 output.
Args:
results: array with shape: (1, 84, n, 1) where n depends on yolov8 model size (for 320x320 model n=2100)
Returns:
detections: array with shape (20, 6) with 20 rows of (class, confidence, y_min, x_min, y_max, x_max)
"""
results = np.transpose(results[0,:,:,0]) # array shape (2100, 84)
classes = np.argmax(results[:, 4:], axis=1) # array shape (2100,); index of class with max confidence of each row
scores = np.max(results[:, 4:], axis=1) # array shape (2100,); max confidence of each row
# array shape (2100, 4); bounding box of each row
boxes = np.transpose(
np.vstack((
results[:,0] - 0.5 * results[:,2],
results[:,1] - 0.5 * results[:,3],
results[:,2],
results[:,3])
)
)
# indices of rows with confidence > SCORE_THRESH with Non-maximum Suppression (NMS)
result_boxes = cv2.dnn.NMSBoxes(boxes, scores, self.score_thresh, self.nms_thresh, 0.5)
detections = np.zeros((20, 6), np.float32)
for i in range(len(result_boxes)):
if i >= 20:
break
index = result_boxes[i]
detections[i] = [
classes[index],
scores[index],
(boxes[index][1]) / self.height,
(boxes[index][0]) / self.width,
(boxes[index][1] + boxes[index][3]) / self.height,
(boxes[index][0] + boxes[index][2]) / self.width
]
return detections
@hide_warnings
def inference(self, tensor_input):
return self.rknn.inference(inputs=tensor_input)
def detect_raw(self, tensor_input):
output = self.inference([tensor_input,])
return self.postprocess(output[0])