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037c4d1cc0
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f46f8a2160
2
Makefile
2
Makefile
@ -1,7 +1,7 @@
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default_target: local
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COMMIT_HASH := $(shell git log -1 --pretty=format:"%h"|tail -1)
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VERSION = 0.16.2
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VERSION = 0.16.1
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IMAGE_REPO ?= ghcr.io/blakeblackshear/frigate
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GITHUB_REF_NAME ?= $(shell git rev-parse --abbrev-ref HEAD)
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BOARDS= #Initialized empty
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@ -1049,10 +1049,10 @@ python3 yolo_to_onnx.py -m yolov7-320
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#### YOLOv9
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YOLOv9 model can be exported as ONNX using the command below. You can copy and paste the whole thing to your terminal and execute, altering `MODEL_SIZE=t` and `IMG_SIZE=320` in the first line to the [model size](https://github.com/WongKinYiu/yolov9#performance) you would like to convert (available model sizes are `t`, `s`, `m`, `c`, and `e`, common image sizes are `320` and `640`).
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YOLOv9 model can be exported as ONNX using the command below. You can copy and paste the whole thing to your terminal and execute, altering `MODEL_SIZE=t` in the first line to the [model size](https://github.com/WongKinYiu/yolov9#performance) you would like to convert (available sizes are `t`, `s`, `m`, `c`, and `e`).
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```sh
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docker build . --build-arg MODEL_SIZE=t --build-arg IMG_SIZE=320 --output . -f- <<'EOF'
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docker build . --build-arg MODEL_SIZE=t --output . -f- <<'EOF'
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FROM python:3.11 AS build
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RUN apt-get update && apt-get install --no-install-recommends -y libgl1 && rm -rf /var/lib/apt/lists/*
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COPY --from=ghcr.io/astral-sh/uv:0.8.0 /uv /bin/
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@ -1061,13 +1061,11 @@ ADD https://github.com/WongKinYiu/yolov9.git .
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RUN uv pip install --system -r requirements.txt
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RUN uv pip install --system onnx==1.18.0 onnxruntime onnx-simplifier>=0.4.1
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ARG MODEL_SIZE
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ARG IMG_SIZE
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ADD https://github.com/WongKinYiu/yolov9/releases/download/v0.1/yolov9-${MODEL_SIZE}-converted.pt yolov9-${MODEL_SIZE}.pt
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RUN sed -i "s/ckpt = torch.load(attempt_download(w), map_location='cpu')/ckpt = torch.load(attempt_download(w), map_location='cpu', weights_only=False)/g" models/experimental.py
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RUN python3 export.py --weights ./yolov9-${MODEL_SIZE}.pt --imgsz ${IMG_SIZE} --simplify --include onnx
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RUN python3 export.py --weights ./yolov9-${MODEL_SIZE}.pt --imgsz 320 --simplify --include onnx
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FROM scratch
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ARG MODEL_SIZE
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ARG IMG_SIZE
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COPY --from=build /yolov9/yolov9-${MODEL_SIZE}.onnx /yolov9-${MODEL_SIZE}-${IMG_SIZE}.onnx
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COPY --from=build /yolov9/yolov9-${MODEL_SIZE}.onnx /
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EOF
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```
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@ -138,11 +138,11 @@ Inference speeds vary greatly depending on the CPU or GPU used, some known examp
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| Intel HD 620 | 15 - 25 ms | | 320: ~ 35 ms | | |
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| Intel HD 630 | ~ 15 ms | | 320: ~ 30 ms | | |
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| Intel UHD 730 | ~ 10 ms | | 320: ~ 19 ms 640: ~ 54 ms | | |
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| Intel UHD 770 | ~ 15 ms | t-320: ~ 16 ms s-320: ~ 20 ms s-640: ~ 40 ms | 320: ~ 20 ms 640: ~ 46 ms | | |
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| Intel UHD 770 | ~ 15 ms | t-320: 24 ms s-320: 30 ms s-640: 45 ms | 320: ~ 20 ms 640: ~ 46 ms | | |
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| Intel N100 | ~ 15 ms | s-320: 30 ms | 320: ~ 25 ms | | Can only run one detector instance |
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| Intel N150 | ~ 15 ms | t-320: 16ms s-320: 24 ms | | | |
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| Intel Iris XE | ~ 10 ms | s-320: 12 ms s-640: 30 ms | 320: ~ 18 ms 640: ~ 50 ms | | |
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| Intel Arc A310 | ~ 5 ms | t-320: 7 ms t-640: 11 ms s-320: 8 ms s-640: 15 ms | 320: ~ 8 ms 640: ~ 14 ms | | |
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| Intel Arc A310 | | t-320: 7 ms t-640: 11 ms s-320: 8 ms s-640: 15 ms | | | |
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| Intel Arc A380 | ~ 6 ms | | 320: ~ 10 ms 640: ~ 22 ms | 336: 20 ms 448: 27 ms | |
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| Intel Arc A750 | ~ 4 ms | | 320: ~ 8 ms | | |
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@ -161,10 +161,6 @@ class ModelConfig(BaseModel):
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if model_info.get("inputDataType"):
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self.input_dtype = model_info["inputDataType"]
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# RKNN always uses NHWC
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if detector == "rknn":
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self.input_tensor = InputTensorEnum.nhwc
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# generate list of attribute labels
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self.attributes_map = {
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**model_info.get("attributes", DEFAULT_ATTRIBUTE_LABEL_MAP),
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@ -301,7 +301,7 @@ def get_intel_gpu_stats(intel_gpu_device: Optional[str]) -> Optional[dict[str, s
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"-o",
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"-",
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"-s",
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"1000", # Intel changed this from seconds to milliseconds in 2024+ versions
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"1",
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]
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if intel_gpu_device:
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@ -33,43 +33,29 @@ export default function useCameraLiveMode(
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const streamsFetcher = useCallback(async (key: string) => {
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const streamNames = key.split(",");
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const metadata: { [key: string]: LiveStreamMetadata } = {};
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const metadataPromises = streamNames.map(async (streamName) => {
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await Promise.all(
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streamNames.map(async (streamName) => {
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try {
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const response = await fetch(`/api/go2rtc/streams/${streamName}`, {
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priority: "low",
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});
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const response = await fetch(`/api/go2rtc/streams/${streamName}`);
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if (response.ok) {
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const data = await response.json();
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return { streamName, data };
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metadata[streamName] = data;
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}
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return { streamName, data: null };
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} catch (error) {
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// eslint-disable-next-line no-console
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console.error(`Failed to fetch metadata for ${streamName}:`, error);
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return { streamName, data: null };
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}
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});
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const results = await Promise.allSettled(metadataPromises);
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const metadata: { [key: string]: LiveStreamMetadata } = {};
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results.forEach((result) => {
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if (result.status === "fulfilled" && result.value.data) {
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metadata[result.value.streamName] = result.value.data;
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}
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});
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}),
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);
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return metadata;
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}, []);
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const { data: allStreamMetadata = {} } = useSWR<{
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[key: string]: LiveStreamMetadata;
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}>(restreamedStreamsKey, streamsFetcher, {
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revalidateOnFocus: false,
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dedupingInterval: 10000,
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});
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}>(restreamedStreamsKey, streamsFetcher, { revalidateOnFocus: false });
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const [preferredLiveModes, setPreferredLiveModes] = useState<{
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[key: string]: LivePlayerMode;
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