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#!/usr/bin/python
"""
# ==============================
# flowlib.py
# library for optical flow processing
# Author: Ruoteng Li
# Date: 6th Aug 2016
# ==============================
"""
#import png
import numpy as np
from PIL import Image
import io

UNKNOWN_FLOW_THRESH = 1e7
SMALLFLOW = 0.0
LARGEFLOW = 1e8

"""
=============
Flow Section
=============
"""

def write_flow(flow, filename):
    """
    write optical flow in Middlebury .flo format
    :param flow: optical flow map
    :param filename: optical flow file path to be saved
    :return: None
    """
    f = open(filename, 'wb')
    magic = np.array([202021.25], dtype=np.float32)
    (height, width) = flow.shape[0:2]
    w = np.array([width], dtype=np.int32)
    h = np.array([height], dtype=np.int32)
    magic.tofile(f)
    w.tofile(f)
    h.tofile(f)
    flow.tofile(f)
    f.close()


def save_flow_image(flow, image_file):
    """
    save flow visualization into image file
    :param flow: optical flow data
    :param flow_fil
    :return: None
    """
    flow_img = flow_to_image(flow)
    img_out = Image.fromarray(flow_img)
    img_out.save(image_file)

def segment_flow(flow):
    h = flow.shape[0]
    w = flow.shape[1]
    u = flow[:, :, 0]
    v = flow[:, :, 1]

    idx = ((abs(u) > LARGEFLOW) | (abs(v) > LARGEFLOW))
    idx2 = (abs(u) == SMALLFLOW)
    class0 = (v == 0) & (u == 0)
    u[idx2] = 0.00001
    tan_value = v / u

    class1 = (tan_value < 1) & (tan_value >= 0) & (u > 0) & (v >= 0)
    class2 = (tan_value >= 1) & (u >= 0) & (v >= 0)
    class3 = (tan_value < -1) & (u <= 0) & (v >= 0)
    class4 = (tan_value < 0) & (tan_value >= -1) & (u < 0) & (v >= 0)
    class8 = (tan_value >= -1) & (tan_value < 0) & (u > 0) & (v <= 0)
    class7 = (tan_value < -1) & (u >= 0) & (v <= 0)
    class6 = (tan_value >= 1) & (u <= 0) & (v <= 0)
    class5 = (tan_value >= 0) & (tan_value < 1) & (u < 0) & (v <= 0)

    seg = np.zeros((h, w))

    seg[class1] = 1
    seg[class2] = 2
    seg[class3] = 3
    seg[class4] = 4
    seg[class5] = 5
    seg[class6] = 6
    seg[class7] = 7
    seg[class8] = 8
    seg[class0] = 0
    seg[idx] = 0

    return seg

def flow_to_image(flow):
    """
    Convert flow into middlebury color code image
    :param flow: optical flow map
    :return: optical flow image in middlebury color
    """
    u = flow[:, :, 0]
    v = flow[:, :, 1]

    maxu = -999.
    maxv = -999.
    minu = 999.
    minv = 999.

    idxUnknow = (abs(u) > UNKNOWN_FLOW_THRESH) | (abs(v) > UNKNOWN_FLOW_THRESH)
    u[idxUnknow] = 0
    v[idxUnknow] = 0

    maxu = max(maxu, np.max(u))
    minu = min(minu, np.min(u))

    maxv = max(maxv, np.max(v))
    minv = min(minv, np.min(v))

    rad = np.sqrt(u ** 2 + v ** 2)
    maxrad = max(5, np.max(rad))
    #maxrad = max(-1, 99)

    u = u/(maxrad + np.finfo(float).eps)
    v = v/(maxrad + np.finfo(float).eps)

    img = compute_color(u, v)

    idx = np.repeat(idxUnknow[:, :, np.newaxis], 3, axis=2)
    img[idx] = 0

    return np.uint8(img)

def disp_to_flowfile(disp, filename):
    """
    Read KITTI disparity file in png format
    :param disp: disparity matrix
    :param filename: the flow file name to save
    :return: None
    """
    f = open(filename, 'wb')
    magic = np.array([202021.25], dtype=np.float32)
    (height, width) = disp.shape[0:2]
    w = np.array([width], dtype=np.int32)
    h = np.array([height], dtype=np.int32)
    empty_map = np.zeros((height, width), dtype=np.float32)
    data = np.dstack((disp, empty_map))
    magic.tofile(f)
    w.tofile(f)
    h.tofile(f)
    data.tofile(f)
    f.close()

def compute_color(u, v):
    """
    compute optical flow color map
    :param u: optical flow horizontal map
    :param v: optical flow vertical map
    :return: optical flow in color code
    """
    [h, w] = u.shape
    img = np.zeros([h, w, 3])
    nanIdx = np.isnan(u) | np.isnan(v)
    u[nanIdx] = 0
    v[nanIdx] = 0

    colorwheel = make_color_wheel()
    ncols = np.size(colorwheel, 0)

    rad = np.sqrt(u**2+v**2)

    a = np.arctan2(-v, -u) / np.pi

    fk = (a+1) / 2 * (ncols - 1) + 1

    k0 = np.floor(fk).astype(int)

    k1 = k0 + 1
    k1[k1 == ncols+1] = 1
    f = fk - k0

    for i in range(0, np.size(colorwheel,1)):
        tmp = colorwheel[:, i]
        col0 = tmp[k0-1] / 255
        col1 = tmp[k1-1] / 255
        col = (1-f) * col0 + f * col1

        idx = rad <= 1
        col[idx] = 1-rad[idx]*(1-col[idx])
        notidx = np.logical_not(idx)

        col[notidx] *= 0.75
        img[:, :, i] = np.uint8(np.floor(255 * col*(1-nanIdx)))

    return img


def make_color_wheel():
    """
    Generate color wheel according Middlebury color code
    :return: Color wheel
    """
    RY = 15
    YG = 6
    GC = 4
    CB = 11
    BM = 13
    MR = 6

    ncols = RY + YG + GC + CB + BM + MR

    colorwheel = np.zeros([ncols, 3])

    col = 0

    # RY
    colorwheel[0:RY, 0] = 255
    colorwheel[0:RY, 1] = np.transpose(np.floor(255*np.arange(0, RY) / RY))
    col += RY

    # YG
    colorwheel[col:col+YG, 0] = 255 - np.transpose(np.floor(255*np.arange(0, YG) / YG))
    colorwheel[col:col+YG, 1] = 255
    col += YG

    # GC
    colorwheel[col:col+GC, 1] = 255
    colorwheel[col:col+GC, 2] = np.transpose(np.floor(255*np.arange(0, GC) / GC))
    col += GC

    # CB
    colorwheel[col:col+CB, 1] = 255 - np.transpose(np.floor(255*np.arange(0, CB) / CB))
    colorwheel[col:col+CB, 2] = 255
    col += CB

    # BM
    colorwheel[col:col+BM, 2] = 255
    colorwheel[col:col+BM, 0] = np.transpose(np.floor(255*np.arange(0, BM) / BM))
    col += + BM

    # MR
    colorwheel[col:col+MR, 2] = 255 - np.transpose(np.floor(255 * np.arange(0, MR) / MR))
    colorwheel[col:col+MR, 0] = 255

    return colorwheel


def read_flo_file(filename, memcached=False):
    """
    Read from Middlebury .flo file
    :param flow_file: name of the flow file
    :return: optical flow data in matrix
    """
    if memcached:
        filename = io.BytesIO(filename)
    f = open(filename, 'rb')
    magic = np.fromfile(f, np.float32, count=1)[0]
    data2d = None

    if 202021.25 != magic:
        print('Magic number incorrect. Invalid .flo file')
    else:
        w = np.fromfile(f, np.int32, count=1)[0]
        h = np.fromfile(f, np.int32, count=1)[0]
        data2d = np.fromfile(f, np.float32, count=2 * w * h)
        # reshape data into 3D array (columns, rows, channels)
        data2d = np.resize(data2d, (h, w, 2))
    f.close()
    return data2d


# fast resample layer
def resample(img, sz):
    """
    img: flow map to be resampled
    sz: new flow map size. Must be [height,weight]
    """
    original_image_size = img.shape
    in_height = img.shape[0]
    in_width = img.shape[1]
    out_height = sz[0]
    out_width = sz[1]
    out_flow = np.zeros((out_height, out_width, 2))
    # find scale
    height_scale =  float(in_height) / float(out_height)
    width_scale =  float(in_width) / float(out_width)

    [x,y] = np.meshgrid(range(out_width), range(out_height))
    xx = x * width_scale
    yy = y * height_scale
    x0 = np.floor(xx).astype(np.int32)
    x1 = x0 + 1
    y0 = np.floor(yy).astype(np.int32)
    y1 = y0 + 1

    x0 = np.clip(x0,0,in_width-1)
    x1 = np.clip(x1,0,in_width-1)
    y0 = np.clip(y0,0,in_height-1)
    y1 = np.clip(y1,0,in_height-1)

    Ia = img[y0,x0,:]
    Ib = img[y1,x0,:]
    Ic = img[y0,x1,:]
    Id = img[y1,x1,:]

    wa = (y1-yy) * (x1-xx)
    wb = (yy-y0) * (x1-xx)
    wc = (y1-yy) * (xx-x0)
    wd = (yy-y0) * (xx-x0)
    out_flow[:,:,0] = (Ia[:,:,0]*wa + Ib[:,:,0]*wb + Ic[:,:,0]*wc + Id[:,:,0]*wd) * out_width / in_width
    out_flow[:,:,1] = (Ia[:,:,1]*wa + Ib[:,:,1]*wb + Ic[:,:,1]*wc + Id[:,:,1]*wd) * out_height / in_height

    return out_flow