|  |  |  | import numpy as np
 | 
					
						
							|  |  |  | import math
 | 
					
						
							|  |  |  | from common.numpy_fast import interp
 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | _K_CURV_V = [1., 0.6]
 | 
					
						
							|  |  |  | _K_CURV_BP = [0., 0.002]
 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | # lane width http://safety.fhwa.dot.gov/geometric/pubs/mitigationstrategies/chapter3/3_lanewidth.cfm
 | 
					
						
							|  |  |  | _LANE_WIDTH_V = [3., 3.8]
 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | # break points of speed
 | 
					
						
							|  |  |  | _LANE_WIDTH_BP = [0., 31.]
 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | def calc_d_lookahead(v_ego, d_poly):
 | 
					
						
							|  |  |  |   # this function computes how far too look for lateral control
 | 
					
						
							|  |  |  |   # howfar we look ahead is function of speed and how much curvy is the path
 | 
					
						
							|  |  |  |   offset_lookahead = 1.
 | 
					
						
							|  |  |  |   k_lookahead = 7.
 | 
					
						
							|  |  |  |   # integrate abs value of second derivative of poly to get a measure of path curvature
 | 
					
						
							|  |  |  |   pts_len = 50.  # m
 | 
					
						
							|  |  |  |   if len(d_poly) > 0:
 | 
					
						
							|  |  |  |     pts = np.polyval([6 * d_poly[0], 2 * d_poly[1]], np.arange(0, pts_len))
 | 
					
						
							|  |  |  |   else:
 | 
					
						
							|  |  |  |     pts = 0.
 | 
					
						
							|  |  |  |   curv = np.sum(np.abs(pts)) / pts_len
 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  |   k_curv = interp(curv, _K_CURV_BP, _K_CURV_V)
 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  |   # sqrt on speed is needed to keep, for a given curvature, the y_des
 | 
					
						
							|  |  |  |   # proportional to speed. Indeed, y_des is prop to d_lookahead^2
 | 
					
						
							|  |  |  |   # 36m at 25m/s
 | 
					
						
							|  |  |  |   d_lookahead = offset_lookahead + math.sqrt(max(v_ego, 0)) * k_lookahead * k_curv
 | 
					
						
							|  |  |  |   return d_lookahead
 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | def calc_lookahead_offset(v_ego, angle_steers, d_lookahead, VM, angle_offset):
 | 
					
						
							|  |  |  |   # this function returns the lateral offset given the steering angle, speed and the lookahead distance
 | 
					
						
							|  |  |  |   sa = math.radians(angle_steers - angle_offset)
 | 
					
						
							|  |  |  |   curvature = VM.calc_curvature(sa, v_ego)
 | 
					
						
							|  |  |  |   # clip is to avoid arcsin NaNs due to too sharp turns
 | 
					
						
							|  |  |  |   y_actual = d_lookahead * np.tan(np.arcsin(np.clip(d_lookahead * curvature, -0.999, 0.999)) / 2.)
 | 
					
						
							|  |  |  |   return y_actual, curvature
 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | def calc_desired_steer_angle(v_ego, y_des, d_lookahead, VM, angle_offset):
 | 
					
						
							|  |  |  |   # inverse of the above function
 | 
					
						
							|  |  |  |   curvature = np.sin(np.arctan(y_des / d_lookahead) * 2.) / d_lookahead
 | 
					
						
							|  |  |  |   steer_des = math.degrees(VM.get_steer_from_curvature(curvature, v_ego)) + angle_offset
 | 
					
						
							|  |  |  |   return steer_des, curvature
 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | def compute_path_pinv(l=50):
 | 
					
						
							|  |  |  |   deg = 3
 | 
					
						
							|  |  |  |   x = np.arange(l*1.0)
 | 
					
						
							|  |  |  |   X = np.vstack(tuple(x**n for n in range(deg, -1, -1))).T
 | 
					
						
							|  |  |  |   pinv = np.linalg.pinv(X)
 | 
					
						
							|  |  |  |   return pinv
 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | def model_polyfit(points, path_pinv):
 | 
					
						
							|  |  |  |   return np.dot(path_pinv, map(float, points))
 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | def calc_desired_path(l_poly,
 | 
					
						
							|  |  |  |                       r_poly,
 | 
					
						
							|  |  |  |                       p_poly,
 | 
					
						
							|  |  |  |                       l_prob,
 | 
					
						
							|  |  |  |                       r_prob,
 | 
					
						
							|  |  |  |                       p_prob,
 | 
					
						
							|  |  |  |                       speed,
 | 
					
						
							|  |  |  |                       lane_width=None):
 | 
					
						
							|  |  |  |   # this function computes the poly for the center of the lane, averaging left and right polys
 | 
					
						
							|  |  |  |   if lane_width is None:
 | 
					
						
							|  |  |  |     lane_width = interp(speed, _LANE_WIDTH_BP, _LANE_WIDTH_V)
 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  |   # lanes in US are ~3.6m wide
 | 
					
						
							|  |  |  |   half_lane_poly = np.array([0., 0., 0., lane_width / 2.])
 | 
					
						
							|  |  |  |   if l_prob + r_prob > 0.01:
 | 
					
						
							|  |  |  |     c_poly = ((l_poly - half_lane_poly) * l_prob +
 | 
					
						
							|  |  |  |               (r_poly + half_lane_poly) * r_prob) / (l_prob + r_prob)
 | 
					
						
							|  |  |  |     c_prob = l_prob + r_prob - l_prob * r_prob
 | 
					
						
							|  |  |  |   else:
 | 
					
						
							|  |  |  |     c_poly = np.zeros(4)
 | 
					
						
							|  |  |  |     c_prob = 0.
 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  |   p_weight = 1.  # predicted path weight relatively to the center of the lane
 | 
					
						
							|  |  |  |   d_poly = list((c_poly * c_prob + p_poly * p_prob * p_weight) / (c_prob + p_prob * p_weight))
 | 
					
						
							|  |  |  |   return d_poly, c_poly, c_prob
 |