def unwrap_freq( im ): max_im = ut.scaling(np.absolute(im)) scaled_im = (im)/max_im*np.pi #ut.plotim1(im) im = unwrap_phase(scaled_im.astype(np.float))/np.pi*max_im ut.plotim1(np.real(im),bar=1) return im
def unwrap_freq(im): max_im = 0.8 * ut.scaling(np.absolute(im)) scaled_im = (im) / max_im * np.pi ut.plotim1(im, bar=1, pause_close=5) im = unwrap_phase(scaled_im) / np.pi * max_im ut.plotim1(im, bar=1, pause_close=5) return im
def test(): # simulated image mat_contents = sio.loadmat(pathdat, struct_as_record=False, squeeze_me=True) xdata = mat_contents["data"] im = xdata.images TE = xdata.TE field = xdata.FieldStrength fat_freq_arr = 42.58 * field * np.array( [-3.80, -3.40, -2.60, -1.94, -0.39, 0.60]) fat_rel_amp = np.array([0.087, 0.693, 0.128, 0.004, 0.039, 0.048]) print(TE) #ut.plotim3(np.angle(im[:,:,:])) nx, ny, nz, nte = im.shape scaling = ut.scaling(im) b = im / scaling #ut.plotim3(mask) #ut.plotim3(np.absolute(b)) #undersampled imag #parameters xpar = np.zeros((nx, ny, nz, 3), np.complex128) # IDEAL and FFT jointly IDEAL = idealc.IDEAL_opt2(TE, fat_freq_arr, fat_rel_amp) #fat_freq_arr , fat_rel_amp IDEAL.set_x(xpar) #should update in each gauss newton iteration residual = IDEAL.residual(b) #do L2 cs mri recon Nite = 10 #number of iterations ostep = 1.0 for i in range(40): dxpar = pf.prox_l2_Afxnb_CGD2(IDEAL.forward, IDEAL.backward, residual, Nite) #if i%1 == 0: # ut.plotim3(np.absolute(xpar + ostep*dxpar)[...,0:2],bar=1, pause_close = 5) # ut.plotim3(np.real(xpar + ostep*dxpar)[...,2],bar=1, pause_close = 5) # ut.plotim3(np.imag(xpar + ostep*dxpar)[...,2],bar=1, pause_close = 5) xpar = xpar + ostep * dxpar #.astype(np.float64) #xpar[...,2] = np.real(xpar[...,2]) #xpar[:,:,2] = np.real(xpar[:,:,2]) #if i > 0: # xpar[:,:,2] = unwrap_freq(np.real(xpar[:,:,2]))\ # +1j*(np.imag(xpar[:,:,2])) IDEAL.set_x(xpar) #should update in each gauss newton iteration residual = IDEAL.residual(b) #ut.plotim3(np.absolute(xpar)[...,0:2],bar=1, pause_close = 5) sio.savemat(pathdat + 'IDEAL_org_result.mat', { 'xpar': xpar, 'residual': residual })
def test(): # simulated image mat_contents = sio.loadmat('data/sim_2dmri.mat') im = mat_contents["sim_2dmri"] #plotim2(im) nx, ny = im.shape #create undersampling mask k = int(round(nx * ny * 0.5)) #undersampling ri = np.random.choice(nx * ny, k, replace=False) #index for undersampling ma = np.zeros(nx * ny) #initialize an all zero vector ma[ri] = 1 #set sampled data points to 1 mask = ma.reshape((nx, ny)) # define A and invA fuctions, i.e. A(x) = b, invA(b) = x def Afunc(image): ksp = np.fft.fft2(image) ksp = np.fft.fftshift(ksp, (0, 1)) return np.multiply(ksp, mask) def invAfunc(ksp): ksp = np.fft.ifftshift(ksp, (0, 1)) im = np.fft.ifft2(ksp) return im cx = np.int(nx / 2) cy = np.int(ny / 2) cxr = np.arange(round(cx - 15), round(cx + 15 + 1)) cyr = np.arange(round(cy - 15), round(cy + 15 + 1)) mask[np.ix_(map(int, cxr), map(int, cyr))] = np.ones( (cxr.shape[0], cyr.shape[0])) #center k-space is fully sampled plotim1(np.absolute(mask)) b = Afunc(im) scaling = ut.scaling(invAfunc(b)) b = b / scaling plotim1(np.absolute(b)) plotim1(np.absolute(invAfunc(b))) #do soft thresholding Nite = 100 #number of iterations step = 1 #step size th = 1.5 # theshold level xopt = solvers.IST_2(Afunc, invAfunc, b, Nite, step, th) plotim1(np.absolute(xopt))
def test(): # simulated image #mat_contents = sio.loadmat('/data/larson/brain_uT2/2016-09-13_3T-volunteer/ute_32echo_random-csreconallec_l2_r0p01.mat', struct_as_record=False, squeeze_me=True) #datpath = '/data/larson/brain_uT2/2016-12-22_7T-volunteer/' # datpath = '/data/larson/brain_uT2/2016-09-13_3T-volunteer/' f = h5py.File(datpath + 'ute_32echo_random-csreconallec_l2_r0p01.mat') #im3d = f['imallplus'][0:10].transpose([1,2,3,0]) #im = im3d[:,40,:,:].squeeze().view(np.complex128) Ndiv = 8 im3d = f['imallplus'][0:Ndiv].transpose([1, 3, 2, 0]) im = im3d[35, :, :, :].squeeze().view(np.complex128) b0_gain = 1000.0 TE = b0_gain * 1e-6 * f['TE'][0][0:Ndiv] field = 3.0 fat_freq_arr = (1.0 / b0_gain) * 42.58 * field * np.array( [-3.80, -3.40, -2.60, -1.94, -0.39, 0.60]) fat_rel_amp = np.array([0.087, 0.693, 0.128, 0.004, 0.039, 0.048]) print(1000 / b0_gain * TE) #ut.plotim3(np.absolute(im[:,:,-10:-1]),[4,-1]) nx, ny, nte = im.shape #undersampling #mask = ut.mask3d( nx, ny, nte, [15,15,0], 0.8) #FTm = opts.FFT2d_kmask(mask) #FTm = opts.FFTW2d_kmask(mask) #FTm = opts.FFT2d() #b = FTm.forward(im) scaling = ut.scaling(im) im = im / scaling ut.plotim3(np.absolute(im[:, :, :]), [4, -1], bar=1, pause_close=2) #ut.plotim3(mask) #ut.plotim3(np.absolute(FTm.backward(b))) #undersampled imag #parameters xpar = np.zeros((nx, ny, 4), np.complex128) #xpar[:,:,0] = 10*np.ones((nx,ny)) #ut.plotim3(np.absolute(xpar),[3,-1]) # IDEAL and FFT jointly IDEAL = idealc.IDEAL_fatmyelin_opt2( TE, fat_freq_arr, fat_rel_amp) #fat_freq_arr , fat_rel_amp Aideal_ftm = IDEAL #opts.joint2operators(IDEAL, FTm)#(FTm,IDEAL)# IDEAL.set_x(xpar) #should update in each gauss newton iteration residual = IDEAL.residual(im) #ut.plotim3(np.absolute(FTm.backward(residual))) # wavelet and x+d_x addx_water = idealc.x_add_dx() addx_fat = idealc.x_add_dx() addx_dfwater = idealc.x_add_dx() addx_dffat = idealc.x_add_dx() #addx = idealc.x_add_dx() #addx.set_x(xpar) #addx.set_w([1, 1, 0.0001]) addx_water.set_x(xpar[..., 0]) #should update in each gauss newton iteration addx_fat.set_x(xpar[..., 1]) addx_dfwater.set_x(xpar[..., 2]) addx_dffat.set_x(xpar[..., 3]) dwt = opts.DWT2d(wavelet='haar', level=4) tvop = tvopc.TV2d_r() Adwt_addx_w = opts.joint2operators(tvop, addx_water) Adwt_addx_f = opts.joint2operators(tvop, addx_fat) Adwt_addx_dwat = opts.joint2operators(tvop, addx_dfwater) Adwt_addx_dfat = opts.joint2operators(tvop, addx_dffat) #Adwt_addx = opts.joint2operators(dwt, addx) #CGD Nite = 100 l1_r1 = 0.01 l1_r2 = 0.01 l1_r3 = 0.01 l1_r4 = 0.01 def f(xi): #return np.linalg.norm(Aideal_ftm.forward(xi)-residual) return alg.obj_fidelity(Aideal_ftm, xi, residual) #\ + l1_r1 * alg.obj_sparsity(Adwt_addx_w, xi[...,0])\ + l1_r2 * alg.obj_sparsity(Adwt_addx_f, xi[...,1])\ + l1_r3 * alg.obj_sparsity(Adwt_addx_dwat, xi[...,2])\ + l1_r4 * alg.obj_sparsity(Adwt_addx_dfat, xi[...,3]) def df(xi): #return 2*Aideal_ftm.backward(Aideal_ftm.forward(xi)-residual) gradall = alg.grad_fidelity(Aideal_ftm, xi, residual) gradall[..., 0] += l1_r1 * alg.grad_sparsity(Adwt_addx_w, xi[..., 0]) gradall[..., 1] += l1_r2 * alg.grad_sparsity(Adwt_addx_f, xi[..., 1]) gradall[..., 2] += l1_r3 * alg.grad_sparsity(Adwt_addx_dwat, xi[..., 2]) gradall[..., 3] += l1_r4 * alg.grad_sparsity(Adwt_addx_dfat, xi[..., 3]) return gradall #do soft thresholding #Nite = 200 #number of iterations #step = 0.1 #step size #th = 0.001 # theshold level #do tv cs mri recon #Nite = 20 #number of iterations #step = 1 #step size #tv_r = 0.01 # regularization term for tv term #rho = 1.0 #ostep = 0.3 for i in range(40): #wavelet L1 IST # dxpar = solvers.IST_3( Aideal_ftm.forward, Aideal_ftm.backward,\ # Adwt_addx.backward, Adwt_addx.forward, residual, Nite, step, th ) #wavelet L1 ADMM # dxpar = solvers.ADMM_l2Afxnb_l1Tfx( Aideal_ftm.forward, Aideal_ftm.backward, \ # Adwt_addx.backward, Adwt_addx.forward, residual, Nite, step, tv_r, rho,25 ) # TV ADMM # dxpar = solvers.ADMM_l2Afxnb_tvx( Aideal_ftm.forward, Aideal_ftm.backward, residual\ # , Nite, step, tv_r, rho ) # L2 CGD # dxpar = pf.prox_l2_Afxnb_CGD2( Aideal_ftm.forward, Aideal_ftm.backward, residual, rho, Nite ) # dxpar = pf.prox_l2_Afxnb_CGD2( Aideal_ftm.forward, Aideal_ftm.backward, residual, Nite ) # L1 CGD #dxpar = pf.prox_l2_Afxnb_CGD2( IDEAL.forward, IDEAL.backward, residual, Nite ) dxpar = alg.conjugate_gradient(f, df, Aideal_ftm.backward(residual), Nite) ostep, j = alg.BacktrackingLineSearch(f, df, xpar, dxpar) if i % 1 == 0: nxpar = xpar + ostep * dxpar nxpar[..., 1] = 10 * nxpar[..., 1] ut.plotim3(np.absolute(nxpar)[..., 0:2], colormap='viridis', bar=1, vmin=0, vmax=1, pause_close=2) ut.plotim3(b0_gain * np.real(nxpar)[..., 2], colormap='viridis', bar=1, pause_close=2) ut.plotim3(b0_gain * np.imag(nxpar)[..., 2], colormap='viridis', bar=1, pause_close=2) ut.plotim3(b0_gain * np.real(nxpar)[..., 3], colormap='viridis', bar=1, pause_close=2) ut.plotim3(b0_gain * np.imag(nxpar)[..., 3], colormap='viridis', bar=1, pause_close=2) sio.savemat(datpath + 'cs_ideal_fitting/cs_IDEAL_CGD.mat', { 'xpar': xpar, 'residual': residual }) xpar = xpar + ostep * dxpar #.astype(np.float64) #if i > 1: #fix the frequence offset to be equal for two components # freq_ave = 0.5 * np.real(xpar[:,:,2]) + 0.5 * np.real(xpar[:,:,3]) # xpar[:,:,2] = freq_ave +1j*(np.imag(xpar[:,:,2])) # xpar[:,:,3] = freq_ave +1j*(np.imag(xpar[:,:,3])) IDEAL.set_x(xpar) #should update in each gauss newton iteration residual = IDEAL.residual(im) ut.plotim3(np.absolute(residual), [4, -1], bar=1, pause_close=2) sio.savemat('../save_data/myelin/ideal_result_cg.mat', \ {'xpar':xpar, 'residual':residual}) #addx.set_x(xpar) #should update in each gauss newton iteration addx_water.set_x( xpar[..., 0]) #should update in each gauss newton iteration addx_fat.set_x(xpar[..., 1]) addx_dfwater.set_x(xpar[..., 2]) addx_dffat.set_x(xpar[..., 3]) ut.plotim3(np.absolute(xpar)[..., 0:2], bar=1) ut.plotim3(np.real(xpar + ostep * dxpar)[..., 2], bar=1) ut.plotim3(np.imag(xpar + ostep * dxpar)[..., 2], bar=1) ut.plotim3(np.real(xpar + ostep * dxpar)[..., 3], bar=1) ut.plotim3(np.imag(xpar + ostep * dxpar)[..., 3], bar=1)