Python utils.minimize_mask() Examples
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Example #1
Source File: model.py From segmentation-unet-maskrcnn with MIT License | 4 votes |
def load_image_gt(dataset, config, image_id, augment=False, use_mini_mask=False): """Load and return ground truth data for an image (image, mask, bounding boxes). augment: If true, apply random image augmentation. Currently, only horizontal flipping is offered. use_mini_mask: If False, returns full-size masks that are the same height and width as the original image. These can be big, for example 1024x1024x100 (for 100 instances). Mini masks are smaller, typically, 224x224 and are generated by extracting the bounding box of the object and resizing it to MINI_MASK_SHAPE. Returns: image: [height, width, 3] shape: the original shape of the image before resizing and cropping. class_ids: [instance_count] Integer class IDs bbox: [instance_count, (y1, x1, y2, x2)] mask: [height, width, instance_count]. The height and width are those of the image unless use_mini_mask is True, in which case they are defined in MINI_MASK_SHAPE. """ # Load image and mask image = dataset.load_image(image_id) mask, class_ids = dataset.load_mask(image_id) shape = image.shape image, window, scale, padding = utils.resize_image( image, min_dim=config.IMAGE_MIN_DIM, max_dim=config.IMAGE_MAX_DIM, padding=config.IMAGE_PADDING) mask = utils.resize_mask(mask, scale, padding) # Random horizontal flips. if augment: if random.randint(0, 1): image = np.fliplr(image) mask = np.fliplr(mask) # Bounding boxes. Note that some boxes might be all zeros # if the corresponding mask got cropped out. # bbox: [num_instances, (y1, x1, y2, x2)] bbox = utils.extract_bboxes(mask) # Active classes # Different datasets have different classes, so track the # classes supported in the dataset of this image. active_class_ids = np.zeros([dataset.num_classes], dtype=np.int32) source_class_ids = dataset.source_class_ids[dataset.image_info[image_id]["source"]] active_class_ids[source_class_ids] = 1 # Resize masks to smaller size to reduce memory usage if use_mini_mask: mask = utils.minimize_mask(bbox, mask, config.MINI_MASK_SHAPE) # Image meta data image_meta = compose_image_meta(image_id, shape, window, active_class_ids) return image, image_meta, class_ids, bbox, mask
Example #2
Source File: model.py From decentralized_AI with GNU General Public License v2.0 | 4 votes |
def load_image_gt(dataset, config, image_id, augment=False, use_mini_mask=False): """Load and return ground truth data for an image (image, mask, bounding boxes). augment: If true, apply random image augmentation. Currently, only horizontal flipping is offered. use_mini_mask: If False, returns full-size masks that are the same height and width as the original image. These can be big, for example 1024x1024x100 (for 100 instances). Mini masks are smaller, typically, 224x224 and are generated by extracting the bounding box of the object and resizing it to MINI_MASK_SHAPE. Returns: image: [height, width, 3] shape: the original shape of the image before resizing and cropping. class_ids: [instance_count] Integer class IDs bbox: [instance_count, (y1, x1, y2, x2)] mask: [height, width, instance_count]. The height and width are those of the image unless use_mini_mask is True, in which case they are defined in MINI_MASK_SHAPE. """ # Load image and mask image = dataset.load_image(image_id) mask, class_ids = dataset.load_mask(image_id) shape = image.shape image, window, scale, padding = utils.resize_image( image, min_dim=config.IMAGE_MIN_DIM, max_dim=config.IMAGE_MAX_DIM, padding=config.IMAGE_PADDING) mask = utils.resize_mask(mask, scale, padding) # Random horizontal flips. if augment: if random.randint(0, 1): image = np.fliplr(image) mask = np.fliplr(mask) # Bounding boxes. Note that some boxes might be all zeros # if the corresponding mask got cropped out. # bbox: [num_instances, (y1, x1, y2, x2)] bbox = utils.extract_bboxes(mask) # Active classes # Different datasets have different classes, so track the # classes supported in the dataset of this image. active_class_ids = np.zeros([dataset.num_classes], dtype=np.int32) source_class_ids = dataset.source_class_ids[dataset.image_info[image_id]["source"]] active_class_ids[source_class_ids] = 1 # Resize masks to smaller size to reduce memory usage if use_mini_mask: mask = utils.minimize_mask(bbox, mask, config.MINI_MASK_SHAPE) # Image meta data image_meta = compose_image_meta(image_id, shape, window, active_class_ids) return image, image_meta, class_ids, bbox, mask
Example #3
Source File: model.py From latte with Apache License 2.0 | 4 votes |
def load_image_gt(dataset, config, image_id, augment=False, use_mini_mask=False): """Load and return ground truth data for an image (image, mask, bounding boxes). augment: If true, apply random image augmentation. Currently, only horizontal flipping is offered. use_mini_mask: If False, returns full-size masks that are the same height and width as the original image. These can be big, for example 1024x1024x100 (for 100 instances). Mini masks are smaller, typically, 224x224 and are generated by extracting the bounding box of the object and resizing it to MINI_MASK_SHAPE. Returns: image: [height, width, 3] shape: the original shape of the image before resizing and cropping. class_ids: [instance_count] Integer class IDs bbox: [instance_count, (y1, x1, y2, x2)] mask: [height, width, instance_count]. The height and width are those of the image unless use_mini_mask is True, in which case they are defined in MINI_MASK_SHAPE. """ # Load image and mask image = dataset.load_image(image_id) mask, class_ids = dataset.load_mask(image_id) shape = image.shape image, window, scale, padding = utils.resize_image( image, min_dim=config.IMAGE_MIN_DIM, max_dim=config.IMAGE_MAX_DIM, padding=config.IMAGE_PADDING) mask = utils.resize_mask(mask, scale, padding) # Random horizontal flips. if augment: if random.randint(0, 1): image = np.fliplr(image) mask = np.fliplr(mask) # Bounding boxes. Note that some boxes might be all zeros # if the corresponding mask got cropped out. # bbox: [num_instances, (y1, x1, y2, x2)] bbox = utils.extract_bboxes(mask) # Active classes # Different datasets have different classes, so track the # classes supported in the dataset of this image. active_class_ids = np.zeros([dataset.num_classes], dtype=np.int32) source_class_ids = dataset.source_class_ids[dataset.image_info[image_id]["source"]] active_class_ids[source_class_ids] = 1 # Resize masks to smaller size to reduce memory usage if use_mini_mask: mask = utils.minimize_mask(bbox, mask, config.MINI_MASK_SHAPE) # Image meta data image_meta = compose_image_meta(image_id, shape, window, active_class_ids) return image, image_meta, class_ids, bbox, mask
Example #4
Source File: model_resnext_v2.py From cvpr-2018-autonomous-driving-autopilot-solution with MIT License | 4 votes |
def load_image_gt(dataset, config, image_id, augment=False, use_mini_mask=False): """Load and return ground truth data for an image (image, mask, bounding boxes). augment: If true, apply random image augmentation. Currently, only horizontal flipping is offered. use_mini_mask: If False, returns full-size masks that are the same height and width as the original image. These can be big, for example 1024x1024x100 (for 100 instances). Mini masks are smaller, typically, 224x224 and are generated by extracting the bounding box of the object and resizing it to MINI_MASK_SHAPE. Returns: image: [height, width, 3] shape: the original shape of the image before resizing and cropping. class_ids: [instance_count] Integer class IDs bbox: [instance_count, (y1, x1, y2, x2)] mask: [height, width, instance_count]. The height and width are those of the image unless use_mini_mask is True, in which case they are defined in MINI_MASK_SHAPE. """ # Load image and mask image = dataset.load_image(image_id) mask, class_ids = dataset.load_mask(image_id) shape = image.shape image_resize, window, scale, padding = utils.resize_image( image, min_dim=config.IMAGE_MIN_DIM, max_dim=config.IMAGE_MAX_DIM, padding=config.IMAGE_PADDING) # mask = utils.resize_mask(mask, scale, padding) mask = mask # Random horizontal flips. if augment: if random.randint(0, 1): image = np.fliplr(image) mask = np.fliplr(mask) # Bounding boxes. Note that some boxes might be all zeros # if the corresponding mask got cropped out. # bbox: [num_instances, (y1, x1, y2, x2)] bbox = utils.extract_bboxes(mask) # Active classes # Different datasets have different classes, so track the # classes supported in the dataset of this image. active_class_ids = np.zeros([dataset.num_classes], dtype=np.int32) source_class_ids = dataset.source_class_ids[dataset.image_info[image_id]["source"]] active_class_ids[source_class_ids] = 1 # Resize masks to smaller size to reduce memory usage if use_mini_mask: mask = utils.minimize_mask(bbox, mask, config.MINI_MASK_SHAPE) # Image meta data image_meta = compose_image_meta(image_id, shape, window, active_class_ids) return image, image_meta, class_ids, bbox, mask
Example #5
Source File: model_resnext.py From cvpr-2018-autonomous-driving-autopilot-solution with MIT License | 4 votes |
def load_image_gt(dataset, config, image_id, augment=True, use_mini_mask=False): """Load and return ground truth data for an image (image, mask, bounding boxes). augment: If true, apply random image augmentation. Currently, only horizontal flipping is offered. use_mini_mask: If False, returns full-size masks that are the same height and width as the original image. These can be big, for example 1024x1024x100 (for 100 instances). Mini masks are smaller, typically, 224x224 and are generated by extracting the bounding box of the object and resizing it to MINI_MASK_SHAPE. Returns: image: [height, width, 3] shape: the original shape of the image before resizing and cropping. class_ids: [instance_count] Integer class IDs bbox: [instance_count, (y1, x1, y2, x2)] mask: [height, width, instance_count]. The height and width are those of the image unless use_mini_mask is True, in which case they are defined in MINI_MASK_SHAPE. """ # Load image and mask image = dataset.load_image(image_id) mask, class_ids = dataset.load_mask(image_id) shape = image.shape image_resize, window, scale, padding = utils.resize_image( image, min_dim=config.IMAGE_MIN_DIM, max_dim=config.IMAGE_MAX_DIM, padding=config.IMAGE_PADDING) # mask = utils.resize_mask(mask, scale, padding) mask = mask # Random horizontal flips. if augment: if random.randint(0, 1): image = np.fliplr(image) mask = np.fliplr(mask) # Bounding boxes. Note that some boxes might be all zeros # if the corresponding mask got cropped out. # bbox: [num_instances, (y1, x1, y2, x2)] bbox = utils.extract_bboxes(mask) # Active classes # Different datasets have different classes, so track the # classes supported in the dataset of this image. active_class_ids = np.zeros([dataset.num_classes], dtype=np.int32) source_class_ids = dataset.source_class_ids[dataset.image_info[image_id]["source"]] active_class_ids[source_class_ids] = 1 # Resize masks to smaller size to reduce memory usage if use_mini_mask: mask = utils.minimize_mask(bbox, mask, config.MINI_MASK_SHAPE) # Image meta data image_meta = compose_image_meta(image_id, shape, window, active_class_ids) return image, image_meta, class_ids, bbox, mask