qubvel-hf's picture
qubvel-hf HF staff
Init project
c509e76
raw
history blame
No virus
11.5 kB
import cv2
import numpy as np
import copy
import torch
import torch
import itertools
import torch.nn as nn
from torch.autograd import Function, Variable
def reorder(myPoints):
myPoints = myPoints.reshape((4, 2))
myPointsNew = np.zeros((4, 1, 2), dtype=np.int32)
add = myPoints.sum(1)
myPointsNew[0] = myPoints[np.argmin(add)]
myPointsNew[3] =myPoints[np.argmax(add)]
diff = np.diff(myPoints, axis=1)
myPointsNew[1] =myPoints[np.argmin(diff)]
myPointsNew[2] = myPoints[np.argmax(diff)]
return myPointsNew
def findMiddle(corners,mask,points=[0.25,0.5,0.75]):
num_middle_points = len(points)
top = [np.array([])]*num_middle_points
bottom = [np.array([])]*num_middle_points
left = [np.array([])]*num_middle_points
right = [np.array([])]*num_middle_points
center_top = []
center_bottom = []
center_left = []
center_right = []
center = (int((corners[0][0][1]+corners[3][0][1])/2),int((corners[0][0][0]+corners[3][0][0])/2))
for ratio in points:
center_top.append( (center[0],int(corners[0][0][0]*(1-ratio)+corners[1][0][0]*ratio)) )
center_bottom.append( (center[0],int(corners[2][0][0]*(1-ratio)+corners[3][0][0]*ratio)) )
center_left.append( (int(corners[0][0][1]*(1-ratio)+corners[2][0][1]*ratio),center[1]) )
center_right.append( (int(corners[1][0][1]*(1-ratio)+corners[3][0][1]*ratio),center[1]) )
for i in range(0,center[0],1):
for j in range(num_middle_points):
if top[j].size==0:
if mask[i,center_top[j][1]]==255:
top[j] = np.asarray([center_top[j][1],i])
top[j] = top[j].reshape(1,2)
for i in range(mask.shape[0]-1,center[0],-1):
for j in range(num_middle_points):
if bottom[j].size==0:
if mask[i,center_bottom[j][1]]==255:
bottom[j] = np.asarray([center_bottom[j][1],i])
bottom[j] = bottom[j].reshape(1,2)
for i in range(mask.shape[1]-1,center[1],-1):
for j in range(num_middle_points):
if right[j].size==0:
if mask[center_right[j][0],i]==255:
right[j] = np.asarray([i,center_right[j][0]])
right[j] = right[j].reshape(1,2)
for i in range(0,center[1]):
for j in range(num_middle_points):
if left[j].size==0:
if mask[center_left[j][0],i]==255:
left[j] = np.asarray([i,center_left[j][0]])
left[j] = left[j].reshape(1,2)
return np.asarray(top+bottom+left+right)
def DP_algorithmv1(contours):
biggest = np.array([])
max_area = 0
step = 0.001
count = 0
# while biggest.size==0:
while True:
for i in contours:
# print(i.shape)
area = cv2.contourArea(i)
# print(area,cv2.arcLength(i, True))
if area > cv2.arcLength(i, True)*10:
peri = cv2.arcLength(i, True)
approx = cv2.approxPolyDP(i, (0.01+step*count) * peri, True)
if area > max_area and len(approx) == 4:
max_area = area
biggest_contours = i
biggest = approx
break
if abs(max_area - cv2.contourArea(biggest))/max_area > 0.3:
biggest = np.array([])
count += 1
if count > 200:
break
temp = biggest[0]
return biggest,max_area, biggest_contours
def DP_algorithm(contours):
biggest = np.array([])
max_area = 0
step = 0.001
count = 0
### largest contours
for i in contours:
area = cv2.contourArea(i)
if area > max_area:
max_area = area
biggest_contours = i
peri = cv2.arcLength(biggest_contours, True)
### find four corners
while True:
approx = cv2.approxPolyDP(biggest_contours, (0.01+step*count) * peri, True)
if len(approx) == 4:
biggest = approx
break
# if abs(max_area - cv2.contourArea(biggest))/max_area > 0.2:
# if abs(max_area - cv2.contourArea(biggest))/max_area > 0.4:
# biggest = np.array([])
count += 1
if count > 200:
break
return biggest,max_area, biggest_contours
def drawRectangle(img,biggest,color,thickness):
cv2.line(img, (biggest[0][0][0], biggest[0][0][1]), (biggest[1][0][0], biggest[1][0][1]), color, thickness)
cv2.line(img, (biggest[0][0][0], biggest[0][0][1]), (biggest[2][0][0], biggest[2][0][1]), color, thickness)
cv2.line(img, (biggest[3][0][0], biggest[3][0][1]), (biggest[2][0][0], biggest[2][0][1]), color, thickness)
cv2.line(img, (biggest[3][0][0], biggest[3][0][1]), (biggest[1][0][0], biggest[1][0][1]), color, thickness)
return img
def minAreaRect(contours,img):
# biggest = np.array([])
max_area = 0
for i in contours:
area = cv2.contourArea(i)
if area > max_area:
peri = cv2.arcLength(i, True)
rect = cv2.minAreaRect(i)
points = cv2.boxPoints(rect)
max_area = area
return points
def cropRectangle(img,biggest):
# print(biggest)
w = np.abs(biggest[0][0][0] - biggest[1][0][0])
h = np.abs(biggest[0][0][1] - biggest[2][0][1])
new_img = np.zeros((w,h,img.shape[-1]),dtype=np.uint8)
new_img = img[biggest[0][0][1]:biggest[0][0][1]+h,biggest[0][0][0]:biggest[0][0][0]+w]
return new_img
def cvimg2torch(img,min=0,max=1):
'''
input:
im -> ndarray uint8 HxWxC
return
tensor -> torch.tensor BxCxHxW
'''
if len(img.shape)==2:
img = np.expand_dims(img,axis=-1)
img = img.astype(float) / 255.0
img = img.transpose(2, 0, 1) # NHWC -> NCHW
img = np.expand_dims(img, 0)
img = torch.from_numpy(img).float()
return img
def torch2cvimg(tensor,min=0,max=1):
'''
input:
tensor -> torch.tensor BxCxHxW C can be 1,3
return
im -> ndarray uint8 HxWxC
'''
im_list = []
for i in range(tensor.shape[0]):
im = tensor.detach().cpu().data.numpy()[i]
im = im.transpose(1,2,0)
im = np.clip(im,min,max)
im = ((im-min)/(max-min)*255).astype(np.uint8)
im_list.append(im)
return im_list
class TPSGridGen(nn.Module):
def __init__(self, target_height, target_width, target_control_points):
'''
target_control_points -> torch.tensor num_pointx2 -1~1
source_control_points -> torch.tensor batch_size x num_point x 2 -1~1
return:
grid -> batch_size x hw x 2 -1~1
'''
super(TPSGridGen, self).__init__()
assert target_control_points.ndimension() == 2
assert target_control_points.size(1) == 2
N = target_control_points.size(0)
self.num_points = N
target_control_points = target_control_points.float()
# create padded kernel matrix
forward_kernel = torch.zeros(N + 3, N + 3)
target_control_partial_repr = self.compute_partial_repr(target_control_points, target_control_points)
forward_kernel[:N, :N].copy_(target_control_partial_repr)
forward_kernel[:N, -3].fill_(1)
forward_kernel[-3, :N].fill_(1)
forward_kernel[:N, -2:].copy_(target_control_points)
forward_kernel[-2:, :N].copy_(target_control_points.transpose(0, 1))
# compute inverse matrix
inverse_kernel = torch.inverse(forward_kernel)
# create target cordinate matrix
HW = target_height * target_width
target_coordinate = list(itertools.product(range(target_height), range(target_width)))
target_coordinate = torch.Tensor(target_coordinate) # HW x 2
Y, X = target_coordinate.split(1, dim = 1)
Y = Y * 2 / (target_height - 1) - 1
X = X * 2 / (target_width - 1) - 1
target_coordinate = torch.cat([X, Y], dim = 1) # convert from (y, x) to (x, y)
target_coordinate_partial_repr = self.compute_partial_repr(target_coordinate.to(target_control_points.device), target_control_points)
target_coordinate_repr = torch.cat([
target_coordinate_partial_repr, torch.ones(HW, 1), target_coordinate
], dim = 1)
# register precomputed matrices
self.register_buffer('inverse_kernel', inverse_kernel)
self.register_buffer('padding_matrix', torch.zeros(3, 2))
self.register_buffer('target_coordinate_repr', target_coordinate_repr)
def forward(self, source_control_points):
assert source_control_points.ndimension() == 3
assert source_control_points.size(1) == self.num_points
assert source_control_points.size(2) == 2
batch_size = source_control_points.size(0)
Y = torch.cat([source_control_points, Variable(self.padding_matrix.expand(batch_size, 3, 2))], 1)
mapping_matrix = torch.matmul(Variable(self.inverse_kernel), Y)
source_coordinate = torch.matmul(Variable(self.target_coordinate_repr), mapping_matrix)
return source_coordinate
# phi(x1, x2) = r^2 * log(r), where r = ||x1 - x2||_2
def compute_partial_repr(self, input_points, control_points):
N = input_points.size(0)
M = control_points.size(0)
pairwise_diff = input_points.view(N, 1, 2) - control_points.view(1, M, 2)
# original implementation, very slow
# pairwise_dist = torch.sum(pairwise_diff ** 2, dim = 2) # square of distance
pairwise_diff_square = pairwise_diff * pairwise_diff
pairwise_dist = pairwise_diff_square[:, :, 0] + pairwise_diff_square[:, :, 1]
repr_matrix = 0.5 * pairwise_dist * torch.log(pairwise_dist)
# fix numerical error for 0 * log(0), substitute all nan with 0
mask = repr_matrix != repr_matrix
repr_matrix.masked_fill_(mask, 0)
return repr_matrix
### deside wheather further process
# point_area = cv2.contourArea(np.concatenate((biggest_angle[0].reshape(1,1,2),middle[0:3],biggest_angle[1].reshape(1,1,2),middle[9:12],biggest_angle[3].reshape(1,1,2),middle[3:6][::-1],biggest_angle[2].reshape(1,1,2),middle[6:9][::-1]),axis=0))
#### 最小外接矩形
# rect = cv2.minAreaRect(contour) # 得到最小外接矩形的(中心(x,y), (宽,高), 旋转角度)
# box = cv2.boxPoints(rect) # cv2.boxPoints(rect) for OpenCV 3.x 获取最小外接矩形的4个顶点坐标
# box = np.int0(box)
# box = box.reshape((4,1,2))
# minrect_area = cv2.contourArea(box)
# print(abs(minrect_area-point_area)/point_area)
#### 四个角点 IOU
# biggest_box = np.concatenate((biggest_angle[0,:,:].reshape(1,1,2),biggest_angle[2,:,:].reshape(1,1,2),biggest_angle[3,:,:].reshape(1,1,2),biggest_angle[1,:,:].reshape(1,1,2)),axis=0)
# biggest_mask = np.zeros_like(mask)
# # corner_area = cv2.contourArea(biggest_box)
# cv2.drawContours(biggest_mask,[biggest_box], -1, color=255, thickness=-1)
# smooth = 1e-5
# biggest_mask_ = biggest_mask > 50
# mask_ = mask > 50
# intersection = (biggest_mask_ & mask_).sum()
# union = (biggest_mask_ | mask_).sum()
# iou = (intersection + smooth) / (union + smooth)
# if iou > 0.975:
# skip = True
# else:
# skip = False
# print(iou)
# cv2.imshow('mask',cv2.resize(mask,(512,512)))
# cv2.imshow('biggest_mask',cv2.resize(biggest_mask,(512,512)))
# cv2.waitKey(0)