Exemple #1
0
def search_t_binary(haze_patch, comparator, start_t, end_t, A, step_tol):
    '''
    The main difference from method2 is the step size is halved after
    each step and the remaining part is changed accordingly
    '''

    # assuming start_t < end_t
    t_begin = start_t
    t_end = end_t
    conf = 1

    # abs() is not required as t_end > t_begin. Always.
    while (t_end - t_begin) > step_tol and \
          (t_end > t_begin):

        t_mid = (t_begin + t_end) / 2.0
        p_d = dehaze_patch(haze_patch, t_mid, A)

        [a, b] = comp_patches(comparator, haze_patch, p_d)

        if a > b:
            # the dehazed one is bad
            # no need to search below t_mid
            t_begin = t_mid
        else:
            t_end = t_mid

    # need to handle out of range values and t_end < t_begin case
    if t_begin > t_end:
        conf = 0

    # this does not have check, as it is done in search_t_binary2
    # whether the t tries to go out of range

    t_mid = (t_begin + t_end) / 2.0

    return (t_mid, conf)
Exemple #2
0
                    # the t_comp's should not be too close
                    dist = pdist(np.reshape(t_comp, (-1, 1)),
                                 metric='minkowski',
                                 p=1)
                    if np.any(dist < t_step):
                        continue

                    in_index = idx * n_in_bad_p[idx]
                    bad_t[in_index:in_index + n_in_bad_p[idx]] = t_comp
                    break

            # print bad_t
            assert (np.all(bad_t < t_g))

            for t_good in good_t:
                d_p = dehaze_patch(haze_patch, t_good, A)
                add_patch(d_p, haze_patch, X_all, Y_all, X_idx)
                A_all[X_idx, :, :, :] = A
                X_idx += 1

                assert (np.sum((haze_patch - d_p)**2) != 0)

            for t_bad in bad_t:
                d_p = dehaze_patch(haze_patch, t_bad, A)
                add_patch(haze_patch, d_p, X_all, Y_all, X_idx)
                A_all[X_idx, :, :, :] = A
                X_idx += 1

                assert (np.sum((haze_patch - d_p)**2) != 0)

            t_all[i, j, 0] = t_g