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kitti_utils.py
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import numpy as np, cv2, os
class Object3d(object):
''' 3d object label '''
def __init__(self, label_file_line):
data = label_file_line.split(' ')
data[1:] = [float(x) for x in data[1:]]
# extract label, truncation, occlusion
self.type = data[0] # 'Car', 'Pedestrian', ...
self.truncation = data[1] # truncated pixel ratio [0..1]
self.occlusion = int(data[2]) # 0=visible, 1=partly occluded, 2=fully occluded, 3=unknown
self.alpha = data[3] # object observation angle [-pi..pi]
# extract 2d bounding box in 0-based coordinates
self.xmin = data[4] # left
self.ymin = data[5] # top
self.xmax = data[6] # right
self.ymax = data[7] # bottom
self.box2d = np.array([self.xmin,self.ymin,self.xmax,self.ymax])
# extract 3d bounding box information
self.h = data[8] # box height
self.w = data[9] # box width
self.l = data[10] # box length (in meters)
self.t = (data[11],data[12],data[13]) # location (x,y,z) in camera coord.
self.ry = data[14] # yaw angle (around Y-axis in camera coordinates) [-pi..pi]
if len(data) > 15: self.score = float(data[15])
if len(data) > 16: self.id = int(data[16])
def print_object(self):
print('Type, truncation, occlusion, alpha: %s, %d, %d, %f' % (self.type, self.truncation, self.occlusion, self.alpha))
print('2d bbox (x0,y0,x1,y1): %f, %f, %f, %f' % (self.xmin, self.ymin, self.xmax, self.ymax))
print('3d bbox h,w,l: %f, %f, %f' % (self.h, self.w, self.l))
print('3d bbox location, ry: (%f, %f, %f), %f' % (self.t[0], self.t[1], self.t[2], self.ry))
def convert_to_str(self):
return '%s %.2f %d %.2f %.2f %.2f %.2f %.2f %.2f %.2f %.2f %.2f %.2f %.2f %.2f' % \
(self.type, self.truncation, self.occlusion, self.alpha, self.xmin, self.ymin, self.xmax, self.ymax,
self.h, self.w, self.l, self.t[0], self.t[1], self.t[2], self.ry)
class Calibration(object):
''' Calibration matrices and utils
3d XYZ in <label>.txt are in rect camera coord.
2d box xy are in image2 coord
Points in <lidar>.bin are in Velodyne coord.
y_image2 = P^2_rect * x_rect
y_image2 = P^2_rect * R0_rect * Tr_velo_to_cam * x_velo
x_ref = Tr_velo_to_cam * x_velo
x_rect = R0_rect * x_ref
P^2_rect = [f^2_u, 0, c^2_u, -f^2_u b^2_x;
0, f^2_v, c^2_v, -f^2_v b^2_y;
0, 0, 1, 0]
= K * [1|t]
image2 coord:
----> x-axis (u)
|
|
v y-axis (v)
velodyne coord:
front x, left y, up z
rect/ref camera coord:
right x, down y, front z
Ref (KITTI paper): http://www.cvlibs.net/publications/Geiger2013IJRR.pdf
TODO(rqi): do matrix multiplication only once for each projection.
'''
def __init__(self, calib_filepath, from_video=False):
if from_video:
calibs = self.read_calib_from_video(calib_filepath)
else:
calibs = self.read_calib_file(calib_filepath)
# Projection matrix from rect camera coord to image2 coord
self.P = calibs['P2']
self.P = np.reshape(self.P, [3,4])
# Rigid transform from Velodyne coord to reference camera coord
self.V2C = calibs['Tr_velo_to_cam']
self.V2C = np.reshape(self.V2C, [3,4])
self.C2V = inverse_rigid_trans(self.V2C)
# Rotation from reference camera coord to rect camera coord
self.R0 = calibs['R0_rect']
self.R0 = np.reshape(self.R0,[3,3])
# Camera intrinsics and extrinsics
self.c_u = self.P[0,2]
self.c_v = self.P[1,2]
self.f_u = self.P[0,0]
self.f_v = self.P[1,1]
self.b_x = self.P[0,3]/(-self.f_u) # relative
self.b_y = self.P[1,3]/(-self.f_v)
def read_calib_file(self, filepath):
''' Read in a calibration file and parse into a dictionary.
Ref: https://github.com/utiasSTARS/pykitti/blob/master/pykitti/utils.py
'''
data = {}
with open(filepath, 'r') as f:
for line in f.readlines():
line = line.rstrip()
if len(line)==0: continue
key, value = line.split(':', 1)
# The only non-float values in these files are dates, which
# we don't care about anyway
try:
data[key] = np.array([float(x) for x in value.split()])
except ValueError:
pass
return data
def read_calib_from_video(self, calib_root_dir):
''' Read calibration for camera 2 from video calib files.
there are calib_cam_to_cam and calib_velo_to_cam under the calib_root_dir
'''
data = {}
cam2cam = self.read_calib_file(os.path.join(calib_root_dir, 'calib_cam_to_cam.txt'))
velo2cam = self.read_calib_file(os.path.join(calib_root_dir, 'calib_velo_to_cam.txt'))
Tr_velo_to_cam = np.zeros((3,4))
Tr_velo_to_cam[0:3,0:3] = np.reshape(velo2cam['R'], [3,3])
Tr_velo_to_cam[:,3] = velo2cam['T']
data['Tr_velo_to_cam'] = np.reshape(Tr_velo_to_cam, [12])
data['R0_rect'] = cam2cam['R_rect_00']
data['P2'] = cam2cam['P_rect_02']
return data
def cart2hom(self, pts_3d):
''' Input: nx3 points in Cartesian
Oupput: nx4 points in Homogeneous by pending 1
'''
n = pts_3d.shape[0]
pts_3d_hom = np.hstack((pts_3d, np.ones((n,1))))
return pts_3d_hom
# ===========================
# ------- 3d to 3d ----------
# ===========================
def project_velo_to_ref(self, pts_3d_velo):
pts_3d_velo = self.cart2hom(pts_3d_velo) # nx4
return np.dot(pts_3d_velo, np.transpose(self.V2C))
def project_ref_to_velo(self, pts_3d_ref):
pts_3d_ref = self.cart2hom(pts_3d_ref) # nx4
return np.dot(pts_3d_ref, np.transpose(self.C2V))
def project_rect_to_ref(self, pts_3d_rect):
''' Input and Output are nx3 points '''
return np.transpose(np.dot(np.linalg.inv(self.R0), np.transpose(pts_3d_rect)))
def project_ref_to_rect(self, pts_3d_ref):
''' Input and Output are nx3 points '''
return np.transpose(np.dot(self.R0, np.transpose(pts_3d_ref)))
def project_rect_to_velo(self, pts_3d_rect):
''' Input: nx3 points in rect camera coord.
Output: nx3 points in velodyne coord.
'''
pts_3d_ref = self.project_rect_to_ref(pts_3d_rect)
return self.project_ref_to_velo(pts_3d_ref)
def project_velo_to_rect(self, pts_3d_velo):
pts_3d_ref = self.project_velo_to_ref(pts_3d_velo)
return self.project_ref_to_rect(pts_3d_ref)
# ===========================
# ------- 3d to 2d ----------
# ===========================
def project_rect_to_image(self, pts_3d_rect):
''' Input: nx3 points in rect camera coord.
Output: nx2 points in image2 coord.
'''
pts_3d_rect = self.cart2hom(pts_3d_rect)
pts_2d = np.dot(pts_3d_rect, np.transpose(self.P)) # nx3
pts_2d[:,0] /= pts_2d[:,2]
pts_2d[:,1] /= pts_2d[:,2]
return pts_2d[:,0:2]
def project_velo_to_image(self, pts_3d_velo):
''' Input: nx3 points in velodyne coord.
Output: nx2 points in image2 coord.
'''
pts_3d_rect = self.project_velo_to_rect(pts_3d_velo)
return self.project_rect_to_image(pts_3d_rect)
# ===========================
# ------- 2d to 3d ----------
# ===========================
def project_image_to_rect(self, uv_depth):
''' Input: nx3 first two channels are uv, 3rd channel
is depth in rect camera coord.
Output: nx3 points in rect camera coord.
'''
n = uv_depth.shape[0]
x = ((uv_depth[:,0]-self.c_u)*uv_depth[:,2])/self.f_u + self.b_x
y = ((uv_depth[:,1]-self.c_v)*uv_depth[:,2])/self.f_v + self.b_y
pts_3d_rect = np.zeros((n,3))
pts_3d_rect[:,0] = x
pts_3d_rect[:,1] = y
pts_3d_rect[:,2] = uv_depth[:,2]
return pts_3d_rect
def project_image_to_velo(self, uv_depth):
pts_3d_rect = self.project_image_to_rect(uv_depth)
return self.project_rect_to_velo(pts_3d_rect)
def inverse_rigid_trans(Tr):
''' Inverse a rigid body transform matrix (3x4 as [R|t])
[R'|-R't; 0|1]
'''
inv_Tr = np.zeros_like(Tr) # 3x4
inv_Tr[0:3,0:3] = np.transpose(Tr[0:3,0:3])
inv_Tr[0:3,3] = np.dot(-np.transpose(Tr[0:3,0:3]), Tr[0:3,3])
return inv_Tr
def read_label(label_filename):
lines = [line.rstrip() for line in open(label_filename)]
# if mask: objects = [Object3d_Mask(line) for line in lines]
objects = [Object3d(line) for line in lines]
return objects
def compute_box_3d(obj, P):
''' Takes an object and a projection matrix (P) and projects the 3d
bounding box into the image plane.
Returns:
corners_2d: (8,2) array in left image coord.
corners_3d: (8,3) array in in rect camera coord.
'''
# compute rotational matrix around yaw axis
R = roty(obj.ry)
# 3d bounding box dimensions
l = obj.l;
w = obj.w;
h = obj.h;
# 3d bounding box corners
x_corners = [l/2,l/2,-l/2,-l/2,l/2,l/2,-l/2,-l/2];
y_corners = [0,0,0,0,-h,-h,-h,-h];
z_corners = [w/2,-w/2,-w/2,w/2,w/2,-w/2,-w/2,w/2];
# rotate and translate 3d bounding box
corners_3d = np.dot(R, np.vstack([x_corners,y_corners,z_corners]))
#print corners_3d.shape
corners_3d[0,:] = corners_3d[0,:] + obj.t[0];
corners_3d[1,:] = corners_3d[1,:] + obj.t[1];
corners_3d[2,:] = corners_3d[2,:] + obj.t[2];
# print('cornsers_3d: ', corners_3d)
# TODO: bugs when the point is behind the camera, the 2D coordinate is wrong
# only draw 3d bounding box for objs in front of the camera
if np.any(corners_3d[2,:]<0.1):
corners_2d = None
return corners_2d, np.transpose(corners_3d)
# project the 3d bounding box into the image plane
corners_2d = project_to_image(np.transpose(corners_3d), P);
#print 'corners_2d: ', corners_2d
return corners_2d, np.transpose(corners_3d)
def project_to_image(pts_3d, P):
''' Project 3d points to image plane.
Usage: pts_2d = projectToImage(pts_3d, P)
input: pts_3d: nx3 matrix
P: 3x4 projection matrix
output: pts_2d: nx2 matrix
P(3x4) dot pts_3d_extended(4xn) = projected_pts_2d(3xn)
=> normalize projected_pts_2d(2xn)
<=> pts_3d_extended(nx4) dot P'(4x3) = projected_pts_2d(nx3)
=> normalize projected_pts_2d(nx2)
'''
n = pts_3d.shape[0]
pts_3d_extend = np.hstack((pts_3d, np.ones((n,1))))
# print(('pts_3d_extend shape: ', pts_3d_extend.shape))
pts_2d = np.dot(pts_3d_extend, np.transpose(P)) # nx3
pts_2d[:,0] /= pts_2d[:,2]
pts_2d[:,1] /= pts_2d[:,2]
return pts_2d[:,0:2]
def draw_projected_box3d(image, qs, color=(255,255,255), thickness=4):
''' Draw 3d bounding box in image
qs: (8,2) array of vertices for the 3d box in following order:
1 -------- 0
/| /|
2 -------- 3 .
| | | |
. 5 -------- 4
|/ |/
6 -------- 7
'''
if qs is not None:
qs = qs.astype(np.int32)
for k in range(0,4):
i,j=k,(k+1)%4
image = cv2.line(image, (qs[i,0],qs[i,1]), (qs[j,0],qs[j,1]), color, thickness) # use LINE_AA for opencv3
i,j=k+4,(k+1)%4 + 4
image = cv2.line(image, (qs[i,0],qs[i,1]), (qs[j,0],qs[j,1]), color, thickness)
i,j=k,k+4
image = cv2.line(image, (qs[i,0],qs[i,1]), (qs[j,0],qs[j,1]), color, thickness)
return image
def roty(t):
''' Rotation about the y-axis. '''
c = np.cos(t)
s = np.sin(t)
return np.array([[c, 0, s],
[0, 1, 0],
[-s, 0, c]])