You can not select more than 25 topics
			Topics must start with a letter or number, can include dashes ('-') and can be up to 35 characters long.
		
		
		
		
		
			
		
			
				
					
					
						
							297 lines
						
					
					
						
							13 KiB
						
					
					
				
			
		
		
	
	
							297 lines
						
					
					
						
							13 KiB
						
					
					
				| #!/usr/bin/env python3
 | |
| import os
 | |
| import time
 | |
| import pickle
 | |
| import numpy as np
 | |
| import cereal.messaging as messaging
 | |
| from cereal import car, log
 | |
| from pathlib import Path
 | |
| from setproctitle import setproctitle
 | |
| from cereal.messaging import PubMaster, SubMaster
 | |
| from msgq.visionipc import VisionIpcClient, VisionStreamType, VisionBuf
 | |
| from opendbc.car.car_helpers import get_demo_car_params
 | |
| from openpilot.common.swaglog import cloudlog
 | |
| from openpilot.common.params import Params
 | |
| from openpilot.common.filter_simple import FirstOrderFilter
 | |
| from openpilot.common.realtime import config_realtime_process
 | |
| from openpilot.common.transformations.camera import DEVICE_CAMERAS
 | |
| from openpilot.common.transformations.model import get_warp_matrix
 | |
| from openpilot.system import sentry
 | |
| from openpilot.selfdrive.car.card import convert_to_capnp
 | |
| from openpilot.selfdrive.controls.lib.desire_helper import DesireHelper
 | |
| from openpilot.selfdrive.modeld.runners import ModelRunner, Runtime
 | |
| from openpilot.selfdrive.modeld.parse_model_outputs import Parser
 | |
| from openpilot.selfdrive.modeld.fill_model_msg import fill_model_msg, fill_pose_msg, PublishState
 | |
| from openpilot.selfdrive.modeld.constants import ModelConstants
 | |
| from openpilot.selfdrive.modeld.models.commonmodel_pyx import ModelFrame, CLContext
 | |
| 
 | |
| PROCESS_NAME = "selfdrive.modeld.modeld"
 | |
| SEND_RAW_PRED = os.getenv('SEND_RAW_PRED')
 | |
| 
 | |
| MODEL_PATHS = {
 | |
|   ModelRunner.THNEED: Path(__file__).parent / 'models/supercombo.thneed',
 | |
|   ModelRunner.ONNX: Path(__file__).parent / 'models/supercombo.onnx'}
 | |
| 
 | |
| METADATA_PATH = Path(__file__).parent / 'models/supercombo_metadata.pkl'
 | |
| 
 | |
| class FrameMeta:
 | |
|   frame_id: int = 0
 | |
|   timestamp_sof: int = 0
 | |
|   timestamp_eof: int = 0
 | |
| 
 | |
|   def __init__(self, vipc=None):
 | |
|     if vipc is not None:
 | |
|       self.frame_id, self.timestamp_sof, self.timestamp_eof = vipc.frame_id, vipc.timestamp_sof, vipc.timestamp_eof
 | |
| 
 | |
| class ModelState:
 | |
|   frame: ModelFrame
 | |
|   wide_frame: ModelFrame
 | |
|   inputs: dict[str, np.ndarray]
 | |
|   output: np.ndarray
 | |
|   prev_desire: np.ndarray  # for tracking the rising edge of the pulse
 | |
|   model: ModelRunner
 | |
| 
 | |
|   def __init__(self, context: CLContext):
 | |
|     self.frame = ModelFrame(context)
 | |
|     self.wide_frame = ModelFrame(context)
 | |
|     self.prev_desire = np.zeros(ModelConstants.DESIRE_LEN, dtype=np.float32)
 | |
|     self.inputs = {
 | |
|       'desire': np.zeros(ModelConstants.DESIRE_LEN * (ModelConstants.HISTORY_BUFFER_LEN+1), dtype=np.float32),
 | |
|       'traffic_convention': np.zeros(ModelConstants.TRAFFIC_CONVENTION_LEN, dtype=np.float32),
 | |
|       'lateral_control_params': np.zeros(ModelConstants.LATERAL_CONTROL_PARAMS_LEN, dtype=np.float32),
 | |
|       'prev_desired_curv': np.zeros(ModelConstants.PREV_DESIRED_CURV_LEN * (ModelConstants.HISTORY_BUFFER_LEN+1), dtype=np.float32),
 | |
|       'features_buffer': np.zeros(ModelConstants.HISTORY_BUFFER_LEN * ModelConstants.FEATURE_LEN, dtype=np.float32),
 | |
|     }
 | |
| 
 | |
|     with open(METADATA_PATH, 'rb') as f:
 | |
|       model_metadata = pickle.load(f)
 | |
| 
 | |
|     self.output_slices = model_metadata['output_slices']
 | |
|     net_output_size = model_metadata['output_shapes']['outputs'][1]
 | |
|     self.output = np.zeros(net_output_size, dtype=np.float32)
 | |
|     self.parser = Parser()
 | |
| 
 | |
|     self.model = ModelRunner(MODEL_PATHS, self.output, Runtime.GPU, False, context)
 | |
|     self.model.addInput("input_imgs", None)
 | |
|     self.model.addInput("big_input_imgs", None)
 | |
|     for k,v in self.inputs.items():
 | |
|       self.model.addInput(k, v)
 | |
| 
 | |
|   def slice_outputs(self, model_outputs: np.ndarray) -> dict[str, np.ndarray]:
 | |
|     parsed_model_outputs = {k: model_outputs[np.newaxis, v] for k,v in self.output_slices.items()}
 | |
|     if SEND_RAW_PRED:
 | |
|       parsed_model_outputs['raw_pred'] = model_outputs.copy()
 | |
|     return parsed_model_outputs
 | |
| 
 | |
|   def run(self, buf: VisionBuf, wbuf: VisionBuf, transform: np.ndarray, transform_wide: np.ndarray,
 | |
|                 inputs: dict[str, np.ndarray], prepare_only: bool) -> dict[str, np.ndarray] | None:
 | |
|     # Model decides when action is completed, so desire input is just a pulse triggered on rising edge
 | |
|     inputs['desire'][0] = 0
 | |
|     self.inputs['desire'][:-ModelConstants.DESIRE_LEN] = self.inputs['desire'][ModelConstants.DESIRE_LEN:]
 | |
|     self.inputs['desire'][-ModelConstants.DESIRE_LEN:] = np.where(inputs['desire'] - self.prev_desire > .99, inputs['desire'], 0)
 | |
|     self.prev_desire[:] = inputs['desire']
 | |
| 
 | |
|     self.inputs['traffic_convention'][:] = inputs['traffic_convention']
 | |
|     self.inputs['lateral_control_params'][:] = inputs['lateral_control_params']
 | |
| 
 | |
|     # if getCLBuffer is not None, frame will be None
 | |
|     self.model.setInputBuffer("input_imgs", self.frame.prepare(buf, transform.flatten(), self.model.getCLBuffer("input_imgs")))
 | |
|     if wbuf is not None:
 | |
|       self.model.setInputBuffer("big_input_imgs", self.wide_frame.prepare(wbuf, transform_wide.flatten(), self.model.getCLBuffer("big_input_imgs")))
 | |
| 
 | |
|     if prepare_only:
 | |
|       return None
 | |
| 
 | |
|     self.model.execute()
 | |
|     outputs = self.parser.parse_outputs(self.slice_outputs(self.output))
 | |
| 
 | |
|     self.inputs['features_buffer'][:-ModelConstants.FEATURE_LEN] = self.inputs['features_buffer'][ModelConstants.FEATURE_LEN:]
 | |
|     self.inputs['features_buffer'][-ModelConstants.FEATURE_LEN:] = outputs['hidden_state'][0, :]
 | |
|     self.inputs['prev_desired_curv'][:-ModelConstants.PREV_DESIRED_CURV_LEN] = self.inputs['prev_desired_curv'][ModelConstants.PREV_DESIRED_CURV_LEN:]
 | |
|     self.inputs['prev_desired_curv'][-ModelConstants.PREV_DESIRED_CURV_LEN:] = outputs['desired_curvature'][0, :]
 | |
|     return outputs
 | |
| 
 | |
| 
 | |
| def main(demo=False):
 | |
|   cloudlog.warning("modeld init")
 | |
| 
 | |
|   sentry.set_tag("daemon", PROCESS_NAME)
 | |
|   cloudlog.bind(daemon=PROCESS_NAME)
 | |
|   setproctitle(PROCESS_NAME)
 | |
|   config_realtime_process(7, 54)
 | |
| 
 | |
|   cloudlog.warning("setting up CL context")
 | |
|   cl_context = CLContext()
 | |
|   cloudlog.warning("CL context ready; loading model")
 | |
|   model = ModelState(cl_context)
 | |
|   cloudlog.warning("models loaded, modeld starting")
 | |
| 
 | |
|   # visionipc clients
 | |
|   while True:
 | |
|     available_streams = VisionIpcClient.available_streams("camerad", block=False)
 | |
|     if available_streams:
 | |
|       use_extra_client = VisionStreamType.VISION_STREAM_WIDE_ROAD in available_streams and VisionStreamType.VISION_STREAM_ROAD in available_streams
 | |
|       main_wide_camera = VisionStreamType.VISION_STREAM_ROAD not in available_streams
 | |
|       break
 | |
|     time.sleep(.1)
 | |
| 
 | |
|   vipc_client_main_stream = VisionStreamType.VISION_STREAM_WIDE_ROAD if main_wide_camera else VisionStreamType.VISION_STREAM_ROAD
 | |
|   vipc_client_main = VisionIpcClient("camerad", vipc_client_main_stream, True, cl_context)
 | |
|   vipc_client_extra = VisionIpcClient("camerad", VisionStreamType.VISION_STREAM_WIDE_ROAD, False, cl_context)
 | |
|   cloudlog.warning(f"vision stream set up, main_wide_camera: {main_wide_camera}, use_extra_client: {use_extra_client}")
 | |
| 
 | |
|   while not vipc_client_main.connect(False):
 | |
|     time.sleep(0.1)
 | |
|   while use_extra_client and not vipc_client_extra.connect(False):
 | |
|     time.sleep(0.1)
 | |
| 
 | |
|   cloudlog.warning(f"connected main cam with buffer size: {vipc_client_main.buffer_len} ({vipc_client_main.width} x {vipc_client_main.height})")
 | |
|   if use_extra_client:
 | |
|     cloudlog.warning(f"connected extra cam with buffer size: {vipc_client_extra.buffer_len} ({vipc_client_extra.width} x {vipc_client_extra.height})")
 | |
| 
 | |
|   # messaging
 | |
|   pm = PubMaster(["modelV2", "drivingModelData", "cameraOdometry"])
 | |
|   sm = SubMaster(["deviceState", "carState", "roadCameraState", "liveCalibration", "driverMonitoringState", "carControl"])
 | |
| 
 | |
|   publish_state = PublishState()
 | |
|   params = Params()
 | |
| 
 | |
|   # setup filter to track dropped frames
 | |
|   frame_dropped_filter = FirstOrderFilter(0., 10., 1. / ModelConstants.MODEL_FREQ)
 | |
|   frame_id = 0
 | |
|   last_vipc_frame_id = 0
 | |
|   run_count = 0
 | |
| 
 | |
|   model_transform_main = np.zeros((3, 3), dtype=np.float32)
 | |
|   model_transform_extra = np.zeros((3, 3), dtype=np.float32)
 | |
|   live_calib_seen = False
 | |
|   buf_main, buf_extra = None, None
 | |
|   meta_main = FrameMeta()
 | |
|   meta_extra = FrameMeta()
 | |
| 
 | |
| 
 | |
|   if demo:
 | |
|     CP = convert_to_capnp(get_demo_car_params())
 | |
|   else:
 | |
|     CP = messaging.log_from_bytes(params.get("CarParams", block=True), car.CarParams)
 | |
| 
 | |
|   cloudlog.info("modeld got CarParams: %s", CP.carName)
 | |
| 
 | |
|   # TODO this needs more thought, use .2s extra for now to estimate other delays
 | |
|   steer_delay = CP.steerActuatorDelay + .2
 | |
| 
 | |
|   DH = DesireHelper()
 | |
| 
 | |
|   while True:
 | |
|     # Keep receiving frames until we are at least 1 frame ahead of previous extra frame
 | |
|     while meta_main.timestamp_sof < meta_extra.timestamp_sof + 25000000:
 | |
|       buf_main = vipc_client_main.recv()
 | |
|       meta_main = FrameMeta(vipc_client_main)
 | |
|       if buf_main is None:
 | |
|         break
 | |
| 
 | |
|     if buf_main is None:
 | |
|       cloudlog.debug("vipc_client_main no frame")
 | |
|       continue
 | |
| 
 | |
|     if use_extra_client:
 | |
|       # Keep receiving extra frames until frame id matches main camera
 | |
|       while True:
 | |
|         buf_extra = vipc_client_extra.recv()
 | |
|         meta_extra = FrameMeta(vipc_client_extra)
 | |
|         if buf_extra is None or meta_main.timestamp_sof < meta_extra.timestamp_sof + 25000000:
 | |
|           break
 | |
| 
 | |
|       if buf_extra is None:
 | |
|         cloudlog.debug("vipc_client_extra no frame")
 | |
|         continue
 | |
| 
 | |
|       if abs(meta_main.timestamp_sof - meta_extra.timestamp_sof) > 10000000:
 | |
|         cloudlog.error(f"frames out of sync! main: {meta_main.frame_id} ({meta_main.timestamp_sof / 1e9:.5f}),\
 | |
|                          extra: {meta_extra.frame_id} ({meta_extra.timestamp_sof / 1e9:.5f})")
 | |
| 
 | |
|     else:
 | |
|       # Use single camera
 | |
|       buf_extra = buf_main
 | |
|       meta_extra = meta_main
 | |
| 
 | |
|     sm.update(0)
 | |
|     desire = DH.desire
 | |
|     is_rhd = sm["driverMonitoringState"].isRHD
 | |
|     frame_id = sm["roadCameraState"].frameId
 | |
|     lateral_control_params = np.array([sm["carState"].vEgo, steer_delay], dtype=np.float32)
 | |
|     if sm.updated["liveCalibration"] and sm.seen['roadCameraState'] and sm.seen['deviceState']:
 | |
|       device_from_calib_euler = np.array(sm["liveCalibration"].rpyCalib, dtype=np.float32)
 | |
|       dc = DEVICE_CAMERAS[(str(sm['deviceState'].deviceType), str(sm['roadCameraState'].sensor))]
 | |
|       model_transform_main = get_warp_matrix(device_from_calib_euler, dc.ecam.intrinsics if main_wide_camera else dc.fcam.intrinsics, False).astype(np.float32)
 | |
|       model_transform_extra = get_warp_matrix(device_from_calib_euler, dc.ecam.intrinsics, True).astype(np.float32)
 | |
|       live_calib_seen = True
 | |
| 
 | |
|     traffic_convention = np.zeros(2)
 | |
|     traffic_convention[int(is_rhd)] = 1
 | |
| 
 | |
|     vec_desire = np.zeros(ModelConstants.DESIRE_LEN, dtype=np.float32)
 | |
|     if desire >= 0 and desire < ModelConstants.DESIRE_LEN:
 | |
|       vec_desire[desire] = 1
 | |
| 
 | |
|     # tracked dropped frames
 | |
|     vipc_dropped_frames = max(0, meta_main.frame_id - last_vipc_frame_id - 1)
 | |
|     frames_dropped = frame_dropped_filter.update(min(vipc_dropped_frames, 10))
 | |
|     if run_count < 10: # let frame drops warm up
 | |
|       frame_dropped_filter.x = 0.
 | |
|       frames_dropped = 0.
 | |
|     run_count = run_count + 1
 | |
| 
 | |
|     frame_drop_ratio = frames_dropped / (1 + frames_dropped)
 | |
|     prepare_only = vipc_dropped_frames > 0
 | |
|     if prepare_only:
 | |
|       cloudlog.error(f"skipping model eval. Dropped {vipc_dropped_frames} frames")
 | |
| 
 | |
|     inputs:dict[str, np.ndarray] = {
 | |
|       'desire': vec_desire,
 | |
|       'traffic_convention': traffic_convention,
 | |
|       'lateral_control_params': lateral_control_params,
 | |
|       }
 | |
| 
 | |
|     mt1 = time.perf_counter()
 | |
|     model_output = model.run(buf_main, buf_extra, model_transform_main, model_transform_extra, inputs, prepare_only)
 | |
|     mt2 = time.perf_counter()
 | |
|     model_execution_time = mt2 - mt1
 | |
| 
 | |
|     if model_output is not None:
 | |
|       modelv2_send = messaging.new_message('modelV2')
 | |
|       drivingdata_send = messaging.new_message('drivingModelData')
 | |
|       posenet_send = messaging.new_message('cameraOdometry')
 | |
|       fill_model_msg(drivingdata_send, modelv2_send, model_output, publish_state, meta_main.frame_id, meta_extra.frame_id, frame_id,
 | |
|                      frame_drop_ratio, meta_main.timestamp_eof, model_execution_time, live_calib_seen)
 | |
| 
 | |
|       desire_state = modelv2_send.modelV2.meta.desireState
 | |
|       l_lane_change_prob = desire_state[log.Desire.laneChangeLeft]
 | |
|       r_lane_change_prob = desire_state[log.Desire.laneChangeRight]
 | |
|       lane_change_prob = l_lane_change_prob + r_lane_change_prob
 | |
|       DH.update(sm['carState'], sm['carControl'].latActive, lane_change_prob)
 | |
|       modelv2_send.modelV2.meta.laneChangeState = DH.lane_change_state
 | |
|       modelv2_send.modelV2.meta.laneChangeDirection = DH.lane_change_direction
 | |
|       drivingdata_send.drivingModelData.meta.laneChangeState = DH.lane_change_state
 | |
|       drivingdata_send.drivingModelData.meta.laneChangeDirection = DH.lane_change_direction
 | |
| 
 | |
|       fill_pose_msg(posenet_send, model_output, meta_main.frame_id, vipc_dropped_frames, meta_main.timestamp_eof, live_calib_seen)
 | |
|       pm.send('modelV2', modelv2_send)
 | |
|       pm.send('drivingModelData', drivingdata_send)
 | |
|       pm.send('cameraOdometry', posenet_send)
 | |
| 
 | |
|     last_vipc_frame_id = meta_main.frame_id
 | |
| 
 | |
| 
 | |
| if __name__ == "__main__":
 | |
|   try:
 | |
|     import argparse
 | |
|     parser = argparse.ArgumentParser()
 | |
|     parser.add_argument('--demo', action='store_true', help='A boolean for demo mode.')
 | |
|     args = parser.parse_args()
 | |
|     main(demo=args.demo)
 | |
|   except KeyboardInterrupt:
 | |
|     cloudlog.warning(f"child {PROCESS_NAME} got SIGINT")
 | |
|   except Exception:
 | |
|     sentry.capture_exception()
 | |
|     raise
 | |
| 
 |