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dataset_test.py
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dataset_test.py
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import os
import math
import random
import torch.utils.data as data
import numpy as np
import matplotlib.pyplot as plt
import matplotlib.patches as patches
import os
from os import listdir
from os.path import isfile, join
import pandas as pd
from sklearn.model_selection import train_test_split
import gc;
gc.enable() # memory is tight
import torch
import pdb
import torch.utils.data as data
import cv2
from image import flip, color_aug
from image import get_affine_transform, affine_transform
dtype = "float32"
## HeatMap Genrating Functions
def gaussian_radius(det_size, min_overlap=0.7):
height, width = det_size
a1 = 1
b1 = (height + width)
c1 = width * height * (1 - min_overlap) / (1 + min_overlap)
sq1 = np.sqrt(b1 ** 2 - 4 * a1 * c1)
r1 = (b1 + sq1) / 2
a2 = 4
b2 = 2 * (height + width)
c2 = (1 - min_overlap) * width * height
sq2 = np.sqrt(b2 ** 2 - 4 * a2 * c2)
r2 = (b2 + sq2) / 2
a3 = 4 * min_overlap
b3 = -2 * min_overlap * (height + width)
c3 = (min_overlap - 1) * width * height
sq3 = np.sqrt(b3 ** 2 - 4 * a3 * c3)
r3 = (b3 + sq3) / 2
return min(r1, r2, r3)
def gaussian2D(shape, sigma=1):
m, n = [(ss - 1.) / 2. for ss in shape]
y, x = np.ogrid[-m:m + 1, -n:n + 1]
h = np.exp(-(x * x + y * y) / (2 * sigma * sigma))
h[h < np.finfo(h.dtype).eps * h.max()] = 0
return h
def gaussian1D(shape, sigma=1):
m = (shape - 1.) / 2.
y = np.ogrid[-m:m + 1]
h = np.exp(-(y * y) / (2 * sigma))
h[h < np.finfo(h.dtype).eps * h.max()] = 0
return h
def draw_umich_gaussian(heatmap, center, y_0, y_1, x_0, x_1, radius, k=1, is_train_x0=True):
diameter = 2 * radius + 1
# pdb.set_trace()
# gaussian = gaussian1D((diameter), sigma=diameter / 6)
gaussian = gaussian2D((diameter, diameter), sigma=diameter / 6) # array([[0.01831564, 0.13533528, 0.01831564],
# [0.13533528, 1. , 0.13533528],
# [0.01831564, 0.13533528, 0.01831564]])
y, x = int(center[1]), int(center[0])
height, width = heatmap.shape[0:2]
left, right = min(x, radius), min(width - x, radius + 1)
top, bottom = min(y, radius), min(height - y, radius + 1)
masked_gaussian = gaussian[radius:radius + bottom, radius] # [0:3, 0:3]
masked_gaussian_low = gaussian[radius - top:radius + 1, radius] # [0:3, 0:3]
if is_train_x0:
# masked_heatmap = heatmap[y - top :y + bottom, x_0 : x_1]
# masked_gaussian = np.expand_dims(gaussian[radius - top:radius + bottom,radius],axis=1) * np.ones_like(masked_heatmap)
masked_heatmap = heatmap[y_0:y_0 + bottom, x_0] # array([[0., 0., 0.],
# [0., 0., 0.],
# [0., 0., 0.]], dtype=float32)
masked_heatmap_e = heatmap[y_0:y_0 + bottom, x_1]
if min(masked_gaussian.shape) > 0 and (
min(masked_heatmap.shape) > 0 or min(masked_heatmap_e.shape) > 0): # TODO debug
np.maximum(masked_heatmap, masked_gaussian * k, out=masked_heatmap)
np.maximum(masked_heatmap_e, masked_gaussian * k, out=masked_heatmap_e)
else:
masked_heatmap_low = heatmap[y_1 - top:y_1 + 1, x_0]
masked_heatmap_lowe = heatmap[y_1 - top:y_1 + 1, x_1]
if min(masked_gaussian.shape) > 0 and (
min(masked_heatmap_low.shape) > 0 or min(masked_heatmap_lowe.shape) > 0): # TODO debug
np.maximum(masked_heatmap_low, masked_gaussian_low * k, out=masked_heatmap_low)
np.maximum(masked_heatmap_lowe, masked_gaussian_low * k, out=masked_heatmap_lowe)
return heatmap
def draw_umich_ind(ind_heatmap, center, x_0, x_1):
y, x = int(center[1]), int(center[0])
ind_heatmap[y, x_0: x_1] = 1
return ind_heatmap
def reverse_res_to_bbox(res):
down_ratio = res['input'].shape[1] / res['hm'].shape[1]
output_h, output_w = res['hm'].shape[0], res['hm'].shape[1]
num_objs = np.sum(res['reg_mask'])
bbox = np.zeros((num_objs, 4), dtype='float32')
ct = res['reg'][:num_objs]
ct[:, 0] += res['ind'][:num_objs] % output_w
ct[:, 1] += res['ind'][:num_objs] // output_w
h, w = res['wh'][:num_objs, 1], res['wh'][:num_objs, 0]
bbox[:, 0] = (ct[:, 0] * 2 - w) / 2
bbox[:, 2] = (ct[:, 0] * 2 + w) / 2
bbox[:, 1] = (ct[:, 1] * 2 - h) / 2
bbox[:, 3] = (ct[:, 1] * 2 + h) / 2
bbox *= down_ratio
return bbox
def reverse_res_to_bbox_centerline_ind(res):
# pdb.set_trace()
down_ratio = res['input'].shape[1] / res['hm'].shape[1]
output_h, output_w = res['hm'].shape[0], res['hm'].shape[1]
num_objs = np.sum(res['reg_mask'])
bbox = np.zeros((num_objs, 4), dtype='float32')
ct = np.zeros((num_objs, 2), dtype="float32")
ct_y = res['reg_y'][:num_objs]
bbox[:, 0] = res['ind'][:num_objs][:, 0] % output_w
bbox[:, 2] = res['ind'][:num_objs][:, 1] % output_w
ct_y += res['ind'][:num_objs][:, 0] // output_w
ct[:, 1] = ct_y
# h, w = res['wh'][:num_objs, 1], res['wh'][:num_objs, 0]
h_d, h_u = res['h_ud'][:num_objs, 1], res['h_ud'][:num_objs, 0]
bbox[:, 1] = (ct[:, 1] + h_d)
bbox[:, 3] = (ct[:, 1] + h_u)
bbox *= down_ratio
return bbox
def reverse_res_to_bbox_centerline(res):
# pdb.set_trace()
down_ratio = res['input'].shape[1] / res['hm'].shape[1]
output_h, output_w = res['hm'].shape[0], res['hm'].shape[1]
num_objs = np.sum(res['reg_mask'])
bbox = np.zeros((num_objs, 4), dtype='float32')
ct = np.zeros((num_objs, 2), dtype="float32")
ct_y = np.squeeze(res['reg_y'][:num_objs])
bbox[:, 0] = res['ind'][:num_objs][:, 0] % output_w
bbox[:, 2] = res['ind'][:num_objs][:, 1] % output_w
ct_y += res['ind'][:num_objs][:, 0] // output_w
# ct[:, 1] = ct_y
# h, w = res['wh'][:num_objs, 1], res['wh'][:num_objs, 0]
h_ud = np.squeeze(res['h_ud'][:num_objs])
bbox[:, 1] = ct_y
bbox[:, 3] = (ct_y + h_ud)
bbox *= down_ratio
return bbox
class ctDataset(data.Dataset):
def __init__(self, split="train"):
# img_dir = 'kitti dataset/'
# ../input/kitti_single/training/label_2/
self.keep_res = False
self.split = split
self.not_rand_crop = True
self.no_color_aug = False
self.original_shift = 0
self.original_scale = 0
self.scale = [0, 0.3, 0.5, 0.7] # , 1.2, 1.5, 1.8, 2.0]
self.shift = [0, 0.1, 0.2, 0.3] # , 0.5, 0.7, 0.8, 0.6]
# self.scale = [0, 0.7, 0.9, 1.2]
# self.shift = [0, 0.1,0.2]
self.flip = 0.5
self.scale_shift_values = 0
self.num_classes = 4
self.max_objs = 80
self.down_ratio = 2
self.color_aug_value = 0.2
self.input_h, self.input_w = 512, 512
self._data_rng = np.random.RandomState(123)
self._eig_val = np.array([0.2141788, 0.01817699, 0.00341571], dtype=np.float32)
self._eig_vec = np.array([
[-0.58752847, -0.69563484, 0.41340352],
[-0.5832747, 0.00994535, -0.81221408],
[-0.56089297, 0.71832671, 0.41158938]], dtype=np.float32)
self.mean = [0.64566372, 0.64566372, 0.64566372]
self.std = [0.08311639, 0.08311639, 0.08311639]
root = '/media/zjn/F/Data/TX_data/all_bbox/'
self.root = root
self.image_dir = os.path.join(root, "RGB/4K_800_801_data_imag_add_mode/")
self.label_dir = os.path.join(root, "label_txt/4K_800_801_label_txt_add_mode/")
#self.image_dir = os.path.join(root,"RGB/1K_2000_3200_data_imag_1000/") # ceshi/")#short_data_imag_4000/")
#self.label_dir = os.path.join(root, "label_txt/1K_2000_3200_data_imag_1000/")
if self.split == "train":
imageset_txt = os.path.join(root, "imageSets", "train.txt")
elif self.split == "test":
imageset_txt = os.path.join(root, "imageSets", "test.txt")
elif self.split == "validation":
imageset_txt = os.path.join(root, "imageSets", "validation.txt")
image_files = []
for line in open(imageset_txt, "r"):
image_name = line.replace("\n", "")
image_files.append(image_name)
# image_name_2 = image_name.replace("RGB_500","RGB_1000")
# image_files.append(image_name_2)
# image_name_3 = image_name.replace("RGB_500", "RGB_2000")
# image_files.append(image_name_3)
# image_name_4 = image_name.replace("RGB_500", "RGB_4000")
# image_files.append(image_name_4)
self.image_files = image_files
self.label_files = [i.replace(".jpg", ".txt") for i in self.image_files]
self.num_samples = len(self.image_files)
def _coco_box_to_bbox(self, box):
bbox = np.array([box[1], box[0], box[3], box[2]],
dtype=np.float32)
return bbox
def _get_border(self, border, size):
i = 1
while size - border // i <= border // i:
i *= 2
return border // i
def __len__(self):
return self.num_samples
def __getitem__(self, idx):
original_idx = self.image_files[idx].replace(".jpg", "")
img_path = os.path.join(self.image_dir + self.image_files[idx])
img = cv2.imread(img_path)
# default_resolution = [1601, 400] # [375, 1242]
# height, width = img.shape[0], img.shape[1]
# print("Before pre-reshape: ", height, width)
# transform to 512 * 512
# reshape image to default size (some samples have slightly different size)
height, width = img.shape[0], img.shape[1]
input_h, input_w = self.input_h, self.input_w
scale_h, scale_w = input_h / height, input_w / width
inp = cv2.resize(img, (input_w, input_h))
# scale_h, scale_w = input_h / height, input_w / width
inp = (inp.astype(np.float32) / 255.)
inp = inp.transpose(2, 0, 1)
output_h = input_h // self.down_ratio
output_w = input_w // self.down_ratio
num_classes = self.num_classes
if self.split in ["test", "validation", "train"]:
res = {'image': img, \
'input': inp, \
'index': idx, \
'ori_index': original_idx}
return res
# get the labels
label_path = os.path.join(self.label_dir + self.label_files[idx])
with open(label_path) as f:
content = f.readlines()
content = [x.split() for x in content]
# print(content)
draw_gaussian = draw_umich_gaussian
draw_ind = draw_umich_ind
hm = np.zeros((num_classes, output_h, output_w), dtype=np.float32)
reg_mask = np.zeros((self.max_objs), dtype=np.uint8)
cls = np.zeros((self.max_objs), dtype=np.float32)
# con_signal = np.zeros((max_objs), dtype=np.int16)
# wh = np.zeros((self.max_objs, 2), dtype=np.float32)
h_ud = np.zeros((self.max_objs, 1), dtype=np.float32)
reg = np.zeros((self.max_objs, 2), dtype=np.float32)
reg_y = np.zeros((self.max_objs, 1), dtype=np.float32)
ind = np.zeros((self.max_objs, 2), dtype=np.int64)
# ind_hm = np.zeros((num_classes, output_h, output_w), dtype=np.float32)
count = 0
for c in content:
# if (c[0] == "Car"):
# pdb.set_trace()
bbox = np.array(c[1:5], dtype="float32")
bbox = self._coco_box_to_bbox(bbox)
res = {'image': img, \
'input': inp, \
'hm': hm, \
'reg_mask': reg_mask, \
'ind': ind, \
# 'ind_hm': ind_hm, \
# 'wh': wh, \
'h_ud': h_ud, \
# 'reg': reg, \
'reg_y': reg_y, \
'cl': cls, \
# 'con_id':con_signal, \
'index': idx, \
'ori_index': original_idx}
return res
if __name__ == "__main__":
im_idx = 0
my_dataset = ctDataset(split="validation")
res = my_dataset.__getitem__(im_idx)
# pdb.set_trace()
img = res['image']
inp = res['input'].transpose(1, 2, 0)
plt.title("Original Image")
plt.imshow(img)
plt.show()
plt.title("transform Image")
plt.imshow(inp)
plt.show()