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							157 lines
						
					
					
						
							5.8 KiB
						
					
					
				| #!/usr/bin/env python3
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| import os
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| import gc
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| import math
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| import time
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| import ctypes
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| import numpy as np
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| from pathlib import Path
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| from typing import Tuple, Dict
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| 
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| from cereal import messaging
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| from cereal.messaging import PubMaster, SubMaster
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| from cereal.visionipc import VisionIpcClient, VisionStreamType, VisionBuf
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| from openpilot.common.swaglog import cloudlog
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| from openpilot.common.params import Params
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| from openpilot.common.realtime import set_realtime_priority
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| from openpilot.selfdrive.modeld.runners import ModelRunner, Runtime
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| from openpilot.selfdrive.modeld.models.commonmodel_pyx import sigmoid
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| 
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| CALIB_LEN = 3
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| REG_SCALE = 0.25
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| MODEL_WIDTH = 1440
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| MODEL_HEIGHT = 960
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| OUTPUT_SIZE = 84
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| SEND_RAW_PRED = os.getenv('SEND_RAW_PRED')
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| MODEL_PATHS = {
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|   ModelRunner.SNPE: Path(__file__).parent / 'models/dmonitoring_model_q.dlc',
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|   ModelRunner.ONNX: Path(__file__).parent / 'models/dmonitoring_model.onnx'}
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| 
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| class DriverStateResult(ctypes.Structure):
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|   _fields_ = [
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|     ("face_orientation", ctypes.c_float*3),
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|     ("face_position", ctypes.c_float*3),
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|     ("face_orientation_std", ctypes.c_float*3),
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|     ("face_position_std", ctypes.c_float*3),
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|     ("face_prob", ctypes.c_float),
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|     ("_unused_a", ctypes.c_float*8),
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|     ("left_eye_prob", ctypes.c_float),
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|     ("_unused_b", ctypes.c_float*8),
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|     ("right_eye_prob", ctypes.c_float),
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|     ("left_blink_prob", ctypes.c_float),
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|     ("right_blink_prob", ctypes.c_float),
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|     ("sunglasses_prob", ctypes.c_float),
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|     ("occluded_prob", ctypes.c_float),
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|     ("ready_prob", ctypes.c_float*4),
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|     ("not_ready_prob", ctypes.c_float*2)]
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| 
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| class DMonitoringModelResult(ctypes.Structure):
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|   _fields_ = [
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|     ("driver_state_lhd", DriverStateResult),
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|     ("driver_state_rhd", DriverStateResult),
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|     ("poor_vision_prob", ctypes.c_float),
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|     ("wheel_on_right_prob", ctypes.c_float)]
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| 
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| class ModelState:
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|   inputs: Dict[str, np.ndarray]
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|   output: np.ndarray
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|   model: ModelRunner
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| 
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|   def __init__(self):
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|     assert ctypes.sizeof(DMonitoringModelResult) == OUTPUT_SIZE * ctypes.sizeof(ctypes.c_float)
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|     self.output = np.zeros(OUTPUT_SIZE, dtype=np.float32)
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|     self.inputs = {
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|       'input_img': np.zeros(MODEL_HEIGHT * MODEL_WIDTH, dtype=np.uint8),
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|       'calib': np.zeros(CALIB_LEN, dtype=np.float32)}
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| 
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|     self.model = ModelRunner(MODEL_PATHS, self.output, Runtime.DSP, True, None)
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|     self.model.addInput("input_img", None)
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|     self.model.addInput("calib", self.inputs['calib'])
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| 
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|   def run(self, buf:VisionBuf, calib:np.ndarray) -> Tuple[np.ndarray, float]:
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|     self.inputs['calib'][:] = calib
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| 
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|     v_offset = buf.height - MODEL_HEIGHT
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|     h_offset = (buf.width - MODEL_WIDTH) // 2
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|     buf_data = buf.data.reshape(-1, buf.stride)
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|     input_data = self.inputs['input_img'].reshape(MODEL_HEIGHT, MODEL_WIDTH)
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|     input_data[:] = buf_data[v_offset:v_offset+MODEL_HEIGHT, h_offset:h_offset+MODEL_WIDTH]
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| 
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|     t1 = time.perf_counter()
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|     self.model.setInputBuffer("input_img", self.inputs['input_img'].view(np.float32))
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|     self.model.execute()
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|     t2 = time.perf_counter()
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|     return self.output, t2 - t1
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| 
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| 
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| def fill_driver_state(msg, ds_result: DriverStateResult):
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|   msg.faceOrientation = [x * REG_SCALE for x in ds_result.face_orientation]
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|   msg.faceOrientationStd = [math.exp(x) for x in ds_result.face_orientation_std]
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|   msg.facePosition = [x * REG_SCALE for x in ds_result.face_position[:2]]
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|   msg.facePositionStd = [math.exp(x) for x in ds_result.face_position_std[:2]]
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|   msg.faceProb = sigmoid(ds_result.face_prob)
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|   msg.leftEyeProb = sigmoid(ds_result.left_eye_prob)
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|   msg.rightEyeProb = sigmoid(ds_result.right_eye_prob)
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|   msg.leftBlinkProb = sigmoid(ds_result.left_blink_prob)
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|   msg.rightBlinkProb = sigmoid(ds_result.right_blink_prob)
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|   msg.sunglassesProb = sigmoid(ds_result.sunglasses_prob)
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|   msg.occludedProb = sigmoid(ds_result.occluded_prob)
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|   msg.readyProb = [sigmoid(x) for x in ds_result.ready_prob]
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|   msg.notReadyProb = [sigmoid(x) for x in ds_result.not_ready_prob]
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| 
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| def get_driverstate_packet(model_output: np.ndarray, frame_id: int, location_ts: int, execution_time: float, dsp_execution_time: float):
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|   model_result = ctypes.cast(model_output.ctypes.data, ctypes.POINTER(DMonitoringModelResult)).contents
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|   msg = messaging.new_message('driverStateV2', valid=True)
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|   ds = msg.driverStateV2
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|   ds.frameId = frame_id
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|   ds.modelExecutionTime = execution_time
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|   ds.dspExecutionTime = dsp_execution_time
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|   ds.poorVisionProb = sigmoid(model_result.poor_vision_prob)
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|   ds.wheelOnRightProb = sigmoid(model_result.wheel_on_right_prob)
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|   ds.rawPredictions = model_output.tobytes() if SEND_RAW_PRED else b''
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|   fill_driver_state(ds.leftDriverData, model_result.driver_state_lhd)
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|   fill_driver_state(ds.rightDriverData, model_result.driver_state_rhd)
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|   return msg
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| 
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| 
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| def main():
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|   gc.disable()
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|   set_realtime_priority(1)
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| 
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|   model = ModelState()
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|   cloudlog.warning("models loaded, dmonitoringmodeld starting")
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|   Params().put_bool("DmModelInitialized", True)
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| 
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|   cloudlog.warning("connecting to driver stream")
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|   vipc_client = VisionIpcClient("camerad", VisionStreamType.VISION_STREAM_DRIVER, True)
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|   while not vipc_client.connect(False):
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|     time.sleep(0.1)
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|   assert vipc_client.is_connected()
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|   cloudlog.warning(f"connected with buffer size: {vipc_client.buffer_len}")
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| 
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|   sm = SubMaster(["liveCalibration"])
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|   pm = PubMaster(["driverStateV2"])
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| 
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|   calib = np.zeros(CALIB_LEN, dtype=np.float32)
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|   # last = 0
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| 
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|   while True:
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|     buf = vipc_client.recv()
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|     if buf is None:
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|       continue
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| 
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|     sm.update(0)
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|     if sm.updated["liveCalibration"]:
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|       calib[:] = np.array(sm["liveCalibration"].rpyCalib)
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| 
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|     t1 = time.perf_counter()
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|     model_output, dsp_execution_time = model.run(buf, calib)
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|     t2 = time.perf_counter()
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| 
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|     pm.send("driverStateV2", get_driverstate_packet(model_output, vipc_client.frame_id, vipc_client.timestamp_sof, t2 - t1, dsp_execution_time))
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|     # print("dmonitoring process: %.2fms, from last %.2fms\n" % (t2 - t1, t1 - last))
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|     # last = t1
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| 
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| 
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| if __name__ == "__main__":
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|   main()
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| 
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