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mosaicdetection.py
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#!/usr/bin/env python3
# -*- coding:utf-8 -*-
# Copyright (c) Megvii, Inc. and its affiliates.
import random
import cv2
import numpy as np
from yolox.utils import adjust_box_anns, get_local_rank
from ..data_augment import random_affine
from .datasets_wrapper import Dataset
def get_mosaic_coordinate(mosaic_image, mosaic_index, xc, yc, w, h, input_h, input_w):
# TODO update doc
# index0 to top left part of image
if mosaic_index == 0:
x1, y1, x2, y2 = max(xc - w, 0), max(yc - h, 0), xc, yc
small_coord = w - (x2 - x1), h - (y2 - y1), w, h
# index1 to top right part of image
elif mosaic_index == 1:
x1, y1, x2, y2 = xc, max(yc - h, 0), min(xc + w, input_w * 2), yc
small_coord = 0, h - (y2 - y1), min(w, x2 - x1), h
# index2 to bottom left part of image
elif mosaic_index == 2:
x1, y1, x2, y2 = max(xc - w, 0), yc, xc, min(input_h * 2, yc + h)
small_coord = w - (x2 - x1), 0, w, min(y2 - y1, h)
# index2 to bottom right part of image
elif mosaic_index == 3:
x1, y1, x2, y2 = xc, yc, min(xc + w, input_w * 2), min(input_h * 2, yc + h) # noqa
small_coord = 0, 0, min(w, x2 - x1), min(y2 - y1, h)
return (x1, y1, x2, y2), small_coord
class MosaicDetection(Dataset):
"""Detection dataset wrapper that performs mixup for normal dataset."""
def __init__(
self, dataset, img_size, mosaic=True, preproc=None,
degrees=10.0, translate=0.1, mosaic_scale=(0.5, 1.5),
mixup_scale=(0.5, 1.5), shear=2.0, enable_mixup=True,
mosaic_prob=1.0, mixup_prob=1.0, *args
):
"""
Args:
dataset(Dataset) : Pytorch dataset object.
img_size (tuple):
mosaic (bool): enable mosaic augmentation or not.
preproc (func):
degrees (float):
translate (float):
mosaic_scale (tuple):
mixup_scale (tuple):
shear (float):
enable_mixup (bool):
*args(tuple) : Additional arguments for mixup random sampler.
"""
super().__init__(img_size, mosaic=mosaic)
self._dataset = dataset
self.preproc = preproc
self.degrees = degrees
self.translate = translate
self.scale = mosaic_scale
self.shear = shear
self.mixup_scale = mixup_scale
self.enable_mosaic = mosaic
self.enable_mixup = enable_mixup
self.mosaic_prob = mosaic_prob
self.mixup_prob = mixup_prob
self.local_rank = get_local_rank()
def __len__(self):
return len(self._dataset)
@Dataset.mosaic_getitem
def __getitem__(self, idx):
if self.enable_mosaic and random.random() < self.mosaic_prob:
mosaic_labels = []
input_dim = self._dataset.input_dim
input_h, input_w = input_dim[0], input_dim[1]
# yc, xc = s, s # mosaic center x, y
yc = int(random.uniform(0.5 * input_h, 1.5 * input_h))
xc = int(random.uniform(0.5 * input_w, 1.5 * input_w))
# 3 additional image indices
indices = [idx] + [random.randint(0, len(self._dataset) - 1) for _ in range(3)]
for i_mosaic, index in enumerate(indices):
img, _labels, _, img_id = self._dataset.pull_item(index)
h0, w0 = img.shape[:2] # orig hw
scale = min(1. * input_h / h0, 1. * input_w / w0)
img = cv2.resize(
img, (int(w0 * scale), int(h0 * scale)), interpolation=cv2.INTER_LINEAR
)
# generate output mosaic image
(h, w, c) = img.shape[:3]
if i_mosaic == 0:
mosaic_img = np.full((input_h * 2, input_w * 2, c), 114, dtype=np.uint8)
# suffix l means large image, while s means small image in mosaic aug.
(l_x1, l_y1, l_x2, l_y2), (s_x1, s_y1, s_x2, s_y2) = get_mosaic_coordinate(
mosaic_img, i_mosaic, xc, yc, w, h, input_h, input_w
)
mosaic_img[l_y1:l_y2, l_x1:l_x2] = img[s_y1:s_y2, s_x1:s_x2]
padw, padh = l_x1 - s_x1, l_y1 - s_y1
labels = _labels.copy()
# Normalized xywh to pixel xyxy format
if _labels.size > 0:
labels[:, 0] = scale * _labels[:, 0] + padw
labels[:, 1] = scale * _labels[:, 1] + padh
labels[:, 2] = scale * _labels[:, 2] + padw
labels[:, 3] = scale * _labels[:, 3] + padh
mosaic_labels.append(labels)
if len(mosaic_labels):
mosaic_labels = np.concatenate(mosaic_labels, 0)
np.clip(mosaic_labels[:, 0], 0, 2 * input_w, out=mosaic_labels[:, 0])
np.clip(mosaic_labels[:, 1], 0, 2 * input_h, out=mosaic_labels[:, 1])
np.clip(mosaic_labels[:, 2], 0, 2 * input_w, out=mosaic_labels[:, 2])
np.clip(mosaic_labels[:, 3], 0, 2 * input_h, out=mosaic_labels[:, 3])
mosaic_img, mosaic_labels = random_affine(
mosaic_img,
mosaic_labels,
target_size=(input_w, input_h),
degrees=self.degrees,
translate=self.translate,
scales=self.scale,
shear=self.shear,
)
# -----------------------------------------------------------------
# CopyPaste: https://arxiv.org/abs/2012.07177
# -----------------------------------------------------------------
if (
self.enable_mixup
and not len(mosaic_labels) == 0
and random.random() < self.mixup_prob
):
mosaic_img, mosaic_labels = self.mixup(mosaic_img, mosaic_labels, self.input_dim)
mix_img, padded_labels = self.preproc(mosaic_img, mosaic_labels, self.input_dim)
img_info = (mix_img.shape[1], mix_img.shape[0])
# -----------------------------------------------------------------
# img_info and img_id are not used for training.
# They are also hard to be specified on a mosaic image.
# -----------------------------------------------------------------
return mix_img, padded_labels, img_info, img_id
else:
self._dataset._input_dim = self.input_dim
img, label, img_info, img_id = self._dataset.pull_item(idx)
img, label = self.preproc(img, label, self.input_dim)
return img, label, img_info, img_id
def mixup(self, origin_img, origin_labels, input_dim):
jit_factor = random.uniform(*self.mixup_scale)
FLIP = random.uniform(0, 1) > 0.5
cp_labels = []
while len(cp_labels) == 0:
cp_index = random.randint(0, self.__len__() - 1)
cp_labels = self._dataset.load_anno(cp_index)
img, cp_labels, _, _ = self._dataset.pull_item(cp_index)
if len(img.shape) == 3:
cp_img = np.ones((input_dim[0], input_dim[1], 3), dtype=np.uint8) * 114
else:
cp_img = np.ones(input_dim, dtype=np.uint8) * 114
cp_scale_ratio = min(input_dim[0] / img.shape[0], input_dim[1] / img.shape[1])
resized_img = cv2.resize(
img,
(int(img.shape[1] * cp_scale_ratio), int(img.shape[0] * cp_scale_ratio)),
interpolation=cv2.INTER_LINEAR,
)
cp_img[
: int(img.shape[0] * cp_scale_ratio), : int(img.shape[1] * cp_scale_ratio)
] = resized_img
cp_img = cv2.resize(
cp_img,
(int(cp_img.shape[1] * jit_factor), int(cp_img.shape[0] * jit_factor)),
)
cp_scale_ratio *= jit_factor
if FLIP:
cp_img = cp_img[:, ::-1, :]
origin_h, origin_w = cp_img.shape[:2]
target_h, target_w = origin_img.shape[:2]
padded_img = np.zeros(
(max(origin_h, target_h), max(origin_w, target_w), 3), dtype=np.uint8
)
padded_img[:origin_h, :origin_w] = cp_img
x_offset, y_offset = 0, 0
if padded_img.shape[0] > target_h:
y_offset = random.randint(0, padded_img.shape[0] - target_h - 1)
if padded_img.shape[1] > target_w:
x_offset = random.randint(0, padded_img.shape[1] - target_w - 1)
padded_cropped_img = padded_img[
y_offset: y_offset + target_h, x_offset: x_offset + target_w
]
cp_bboxes_origin_np = adjust_box_anns(
cp_labels[:, :4].copy(), cp_scale_ratio, 0, 0, origin_w, origin_h
)
if FLIP:
cp_bboxes_origin_np[:, 0::2] = (
origin_w - cp_bboxes_origin_np[:, 0::2][:, ::-1]
)
cp_bboxes_transformed_np = cp_bboxes_origin_np.copy()
cp_bboxes_transformed_np[:, 0::2] = np.clip(
cp_bboxes_transformed_np[:, 0::2] - x_offset, 0, target_w
)
cp_bboxes_transformed_np[:, 1::2] = np.clip(
cp_bboxes_transformed_np[:, 1::2] - y_offset, 0, target_h
)
cls_labels = cp_labels[:, 4:5].copy()
box_labels = cp_bboxes_transformed_np
labels = np.hstack((box_labels, cls_labels))
origin_labels = np.vstack((origin_labels, labels))
origin_img = origin_img.astype(np.float32)
origin_img = 0.5 * origin_img + 0.5 * padded_cropped_img.astype(np.float32)
return origin_img.astype(np.uint8), origin_labels