| |
| import numpy as np |
| from utils.util import * |
| np.seterr(divide='ignore', invalid='ignore') |
|
|
| ''' |
| z: depth image in 'centimetres' |
| missingMask: a mask |
| C: camera matrix |
| ''' |
| def processDepthImage(z, missingMask, C): |
| yDirParam_angleThresh = np.array([45, 15]) |
| yDirParam_iter = np.array([5, 5]) |
| yDirParam_y0 = np.array([0, 1, 0]) |
|
|
| normalParam_patchSize = np.array([3, 10]) |
|
|
| X, Y, Z = getPointCloudFromZ(z, C, 1) |
|
|
| |
| |
| |
| |
|
|
| |
| pc = np.zeros([z.shape[0], z.shape[1], 3]) |
| pc[:,:,0] = X |
| pc[:,:,1] = Y |
| pc[:,:,2] = Z |
|
|
| N1, b1 = computeNormalsSquareSupport(z/100, missingMask, normalParam_patchSize[0], |
| 1, C, np.ones(z.shape)) |
| N2, b2 = computeNormalsSquareSupport(z/100, missingMask, normalParam_patchSize[1], |
| 1, C, np.ones(z.shape)) |
|
|
| N = N1 |
|
|
| |
| yDir = getYDir(N2, yDirParam_angleThresh, yDirParam_iter, yDirParam_y0) |
| y0 = np.array([[0, 1, 0]]).T |
| R = getRMatrix(y0, yDir) |
|
|
| |
| NRot = rotatePC(N, R.T) |
|
|
| pcRot = rotatePC(pc, R.T) |
| h = -pcRot[:,:,1] |
| yMin = np.percentile(h, 0) |
| if (yMin > -90): |
| yMin = -130 |
| h = h - yMin |
|
|
| return pc, N, yDir, h, pcRot, NRot |
|
|
| ''' |
| getPointCloudFromZ: use depth image and camera matrix to get pointcloud |
| Z is in 'centimetres' |
| C: camera matrix |
| s: is the factor by which Z has been upsampled |
| ''' |
| def getPointCloudFromZ(Z, C, s=1): |
| h, w= Z.shape |
| xx, yy = np.meshgrid(np.array(range(w))+1, np.array(range(h))+1) |
| |
| cc_rgb = C[0:2,2] * s |
| fc_rgb = np.diag(C[0:2,0:2]) * s |
| x3 = np.multiply((xx - cc_rgb[0]), Z) / fc_rgb[0] |
| y3 = np.multiply((yy - cc_rgb[1]), Z) / fc_rgb[1] |
| z3 = Z |
| return x3, y3, z3 |
|
|
| ''' |
| Clip out a 2R+1 x 2R+1 window at each point and estimate |
| the normal from points within this window. In case the window |
| straddles more than a single superpixel, only take points in the |
| same superpixel as the centre pixel. |
| |
| Input: |
| depthImage: in meters |
| missingMask: boolean mask of what data was missing |
| R: radius of clipping |
| sc: to upsample or not |
| superpixels: superpixel map to define bounadaries that should |
| not be straddled |
| ''' |
| def computeNormalsSquareSupport(depthImage, missingMask, R, sc, cameraMatrix, superpixels): |
| depthImage = depthImage*100 |
| X, Y, Z = getPointCloudFromZ(depthImage, cameraMatrix, sc) |
| Xf = X |
| Yf = Y |
| Zf = Z |
| pc = np.zeros([depthImage.shape[0], depthImage.shape[1], 3]) |
| pc[:,:,0] = Xf |
| pc[:,:,1] = Yf |
| pc[:,:,2] = Zf |
| XYZf = np.copy(pc) |
|
|
| |
| ind = np.where(missingMask == 1) |
| X[ind] = np.nan |
| Y[ind] = np.nan |
| Z[ind] = np.nan |
|
|
| one_Z = np.expand_dims(1 / Z, axis=2) |
| X_Z = np.divide(X, Z) |
| Y_Z = np.divide(Y, Z) |
| one = np.copy(Z) |
| one[np.invert(np.isnan(one[:, :]))] = 1 |
| ZZ = np.multiply(Z, Z) |
| X_ZZ = np.expand_dims(np.divide(X, ZZ), axis=2) |
| Y_ZZ = np.expand_dims(np.divide(Y, ZZ), axis=2) |
|
|
| X_Z_2 = np.expand_dims(np.multiply(X_Z, X_Z), axis=2) |
| XY_Z = np.expand_dims(np.multiply(X_Z, Y_Z), axis=2) |
| Y_Z_2 = np.expand_dims(np.multiply(Y_Z, Y_Z), axis=2) |
|
|
| AtARaw = np.concatenate((X_Z_2, XY_Z, np.expand_dims(X_Z, axis=2), Y_Z_2, |
| np.expand_dims(Y_Z, axis=2), np.expand_dims(one, axis=2)), axis=2) |
|
|
| AtbRaw = np.concatenate((X_ZZ, Y_ZZ, one_Z), axis=2) |
|
|
| |
| AtA = filterItChopOff(np.concatenate((AtARaw, AtbRaw), axis=2), R, superpixels) |
| Atb = AtA[:, :, AtARaw.shape[2]:] |
| AtA = AtA[:, :, :AtARaw.shape[2]] |
|
|
| AtA_1, detAtA = invertIt(AtA) |
| N = mutiplyIt(AtA_1, Atb) |
|
|
| divide_fac = np.sqrt(np.sum(np.multiply(N, N), axis=2)) |
| |
| b = np.divide(-detAtA, divide_fac) |
| for i in range(3): |
| N[:, :, i] = np.divide(N[:, :, i], divide_fac) |
|
|
| |
| |
| SN = np.sign(N[:, :, 2]) |
| SN[SN == 0] = 1 |
| extend_SN = np.expand_dims(SN, axis=2) |
| extend_SN = np.concatenate((extend_SN, extend_SN, extend_SN), axis=2) |
| N = np.multiply(N, extend_SN) |
| b = np.multiply(b, SN) |
| sn = np.sign(np.sum(np.multiply(N, XYZf), axis=2)) |
| sn[np.isnan(sn)] = 1 |
| sn[sn == 0] = 1 |
| extend_sn = np.expand_dims(sn, axis=2) |
| N = np.multiply(extend_sn, N) |
| b = np.multiply(b, sn) |
| return N, b |