import numpy as np from openpilot.selfdrive.modeld.constants import ModelConstants def sigmoid(x): return 1. / (1. + np.exp(-x)) def softmax(x, axis=-1): x -= np.max(x, axis=axis, keepdims=True) if x.dtype == np.float32 or x.dtype == np.float64: np.exp(x, out=x) else: x = np.exp(x) x /= np.sum(x, axis=axis, keepdims=True) return x class Parser: def __init__(self, ignore_missing=False): self.ignore_missing = ignore_missing def check_missing(self, outs, name): if name not in outs and not self.ignore_missing: raise ValueError(f"Missing output {name}") return name not in outs def parse_categorical_crossentropy(self, name, outs, out_shape=None): if self.check_missing(outs, name): return raw = outs[name] if out_shape is not None: raw = raw.reshape((raw.shape[0],) + out_shape) outs[name] = softmax(raw, axis=-1) def parse_binary_crossentropy(self, name, outs): if self.check_missing(outs, name): return raw = outs[name] outs[name] = sigmoid(raw) def parse_mdn(self, name, outs, in_N=0, out_N=1, out_shape=None): if self.check_missing(outs, name): return raw = outs[name] raw = raw.reshape((raw.shape[0], max(in_N, 1), -1)) pred_mu = raw[:,:,:(raw.shape[2] - out_N)//2] n_values = (raw.shape[2] - out_N)//2 pred_mu = raw[:,:,:n_values] pred_std = np.exp(raw[:,:,n_values: 2*n_values]) if in_N > 1: weights = np.zeros((raw.shape[0], in_N, out_N), dtype=raw.dtype) for i in range(out_N): weights[:,:,i - out_N] = softmax(raw[:,:,i - out_N], axis=-1) if out_N == 1: for fidx in range(weights.shape[0]): idxs = np.argsort(weights[fidx][:,0])[::-1] weights[fidx] = weights[fidx][idxs] pred_mu[fidx] = pred_mu[fidx][idxs] pred_std[fidx] = pred_std[fidx][idxs] full_shape = tuple([raw.shape[0], in_N] + list(out_shape)) outs[name + '_weights'] = weights outs[name + '_hypotheses'] = pred_mu.reshape(full_shape) outs[name + '_stds_hypotheses'] = pred_std.reshape(full_shape) pred_mu_final = np.zeros((raw.shape[0], out_N, n_values), dtype=raw.dtype) pred_std_final = np.zeros((raw.shape[0], out_N, n_values), dtype=raw.dtype) for fidx in range(weights.shape[0]): for hidx in range(out_N): idxs = np.argsort(weights[fidx,:,hidx])[::-1] pred_mu_final[fidx, hidx] = pred_mu[fidx, idxs[0]] pred_std_final[fidx, hidx] = pred_std[fidx, idxs[0]] else: pred_mu_final = pred_mu pred_std_final = pred_std if out_N > 1: final_shape = tuple([raw.shape[0], out_N] + list(out_shape)) else: final_shape = tuple([raw.shape[0],] + list(out_shape)) outs[name] = pred_mu_final.reshape(final_shape) outs[name + '_stds'] = pred_std_final.reshape(final_shape) def parse_outputs(self, outs: dict[str, np.ndarray]) -> dict[str, np.ndarray]: self.parse_mdn('plan', outs, in_N=ModelConstants.PLAN_MHP_N, out_N=ModelConstants.PLAN_MHP_SELECTION, out_shape=(ModelConstants.IDX_N,ModelConstants.PLAN_WIDTH)) self.parse_mdn('lane_lines', outs, in_N=0, out_N=0, out_shape=(ModelConstants.NUM_LANE_LINES,ModelConstants.IDX_N,ModelConstants.LANE_LINES_WIDTH)) self.parse_mdn('road_edges', outs, in_N=0, out_N=0, out_shape=(ModelConstants.NUM_ROAD_EDGES,ModelConstants.IDX_N,ModelConstants.LANE_LINES_WIDTH)) self.parse_mdn('pose', outs, in_N=0, out_N=0, out_shape=(ModelConstants.POSE_WIDTH,)) self.parse_mdn('road_transform', outs, in_N=0, out_N=0, out_shape=(ModelConstants.POSE_WIDTH,)) self.parse_mdn('sim_pose', outs, in_N=0, out_N=0, out_shape=(ModelConstants.POSE_WIDTH,)) self.parse_mdn('wide_from_device_euler', outs, in_N=0, out_N=0, out_shape=(ModelConstants.WIDE_FROM_DEVICE_WIDTH,)) self.parse_mdn('lead', outs, in_N=ModelConstants.LEAD_MHP_N, out_N=ModelConstants.LEAD_MHP_SELECTION, out_shape=(ModelConstants.LEAD_TRAJ_LEN,ModelConstants.LEAD_WIDTH)) if 'lat_planner_solution' in outs: self.parse_mdn('lat_planner_solution', outs, in_N=0, out_N=0, out_shape=(ModelConstants.IDX_N,ModelConstants.LAT_PLANNER_SOLUTION_WIDTH)) if 'desired_curvature' in outs: self.parse_mdn('desired_curvature', outs, in_N=0, out_N=0, out_shape=(ModelConstants.DESIRED_CURV_WIDTH,)) for k in ['lead_prob', 'lane_lines_prob', 'meta']: self.parse_binary_crossentropy(k, outs) self.parse_categorical_crossentropy('desire_state', outs, out_shape=(ModelConstants.DESIRE_PRED_WIDTH,)) self.parse_categorical_crossentropy('desire_pred', outs, out_shape=(ModelConstants.DESIRE_PRED_LEN,ModelConstants.DESIRE_PRED_WIDTH)) return outs