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| """ | |
| Mask R-CNN | |
| Common utility functions and classes. | |
| Copyright (c) 2017 Matterport, Inc. | |
| Licensed under the MIT License (see LICENSE for details) | |
| Written by Waleed Abdulla | |
| """ | |
| import sys | |
| import os | |
| import logging | |
| import math | |
| import random | |
| import numpy as np | |
| import tensorflow as tf | |
| import scipy | |
| import skimage.color | |
| import skimage.io | |
| import skimage.transform | |
| import urllib.request | |
| import shutil | |
| import warnings | |
| from distutils.version import LooseVersion | |
| # URL from which to download the latest COCO trained weights | |
| COCO_MODEL_URL = "https://github.com/matterport/Mask_RCNN/releases/download/v2.0/mask_rcnn_coco.h5" | |
| ############################################################ | |
| # Bounding Boxes | |
| ############################################################ | |
| def extract_bboxes(mask): | |
| """Compute bounding boxes from masks. | |
| mask: [height, width, num_instances]. Mask pixels are either 1 or 0. | |
| Returns: bbox array [num_instances, (y1, x1, y2, x2)]. | |
| """ | |
| boxes = np.zeros([mask.shape[-1], 4], dtype=np.int32) | |
| for i in range(mask.shape[-1]): | |
| m = mask[:, :, i] | |
| # Bounding box. | |
| horizontal_indicies = np.where(np.any(m, axis=0))[0] | |
| vertical_indicies = np.where(np.any(m, axis=1))[0] | |
| if horizontal_indicies.shape[0]: | |
| x1, x2 = horizontal_indicies[[0, -1]] | |
| y1, y2 = vertical_indicies[[0, -1]] | |
| # x2 and y2 should not be part of the box. Increment by 1. | |
| x2 += 1 | |
| y2 += 1 | |
| else: | |
| # No mask for this instance. Might happen due to | |
| # resizing or cropping. Set bbox to zeros | |
| x1, x2, y1, y2 = 0, 0, 0, 0 | |
| boxes[i] = np.array([y1, x1, y2, x2]) | |
| return boxes.astype(np.int32) | |
| def compute_iou(box, boxes, box_area, boxes_area): | |
| """Calculates IoU of the given box with the array of the given boxes. | |
| box: 1D vector [y1, x1, y2, x2] | |
| boxes: [boxes_count, (y1, x1, y2, x2)] | |
| box_area: float. the area of 'box' | |
| boxes_area: array of length boxes_count. | |
| Note: the areas are passed in rather than calculated here for | |
| efficiency. Calculate once in the caller to avoid duplicate work. | |
| """ | |
| # Calculate intersection areas | |
| y1 = np.maximum(box[0], boxes[:, 0]) | |
| y2 = np.minimum(box[2], boxes[:, 2]) | |
| x1 = np.maximum(box[1], boxes[:, 1]) | |
| x2 = np.minimum(box[3], boxes[:, 3]) | |
| intersection = np.maximum(x2 - x1, 0) * np.maximum(y2 - y1, 0) | |
| union = box_area + boxes_area[:] - intersection[:] | |
| iou = intersection / union | |
| return iou | |
| def compute_overlaps(boxes1, boxes2): | |
| """Computes IoU overlaps between two sets of boxes. | |
| boxes1, boxes2: [N, (y1, x1, y2, x2)]. | |
| For better performance, pass the largest set first and the smaller second. | |
| """ | |
| # Areas of anchors and GT boxes | |
| area1 = (boxes1[:, 2] - boxes1[:, 0]) * (boxes1[:, 3] - boxes1[:, 1]) | |
| area2 = (boxes2[:, 2] - boxes2[:, 0]) * (boxes2[:, 3] - boxes2[:, 1]) | |
| # Compute overlaps to generate matrix [boxes1 count, boxes2 count] | |
| # Each cell contains the IoU value. | |
| overlaps = np.zeros((boxes1.shape[0], boxes2.shape[0])) | |
| for i in range(overlaps.shape[1]): | |
| box2 = boxes2[i] | |
| overlaps[:, i] = compute_iou(box2, boxes1, area2[i], area1) | |
| return overlaps | |
| def compute_overlaps_masks(masks1, masks2): | |
| """Computes IoU overlaps between two sets of masks. | |
| masks1, masks2: [Height, Width, instances] | |
| """ | |
| # If either set of masks is empty return empty result | |
| if masks1.shape[-1] == 0 or masks2.shape[-1] == 0: | |
| return np.zeros((masks1.shape[-1], masks2.shape[-1])) | |
| # flatten masks and compute their areas | |
| masks1 = np.reshape(masks1 > .5, (-1, masks1.shape[-1])).astype(np.float32) | |
| masks2 = np.reshape(masks2 > .5, (-1, masks2.shape[-1])).astype(np.float32) | |
| area1 = np.sum(masks1, axis=0) | |
| area2 = np.sum(masks2, axis=0) | |
| # intersections and union | |
| intersections = np.dot(masks1.T, masks2) | |
| union = area1[:, None] + area2[None, :] - intersections | |
| overlaps = intersections / union | |
| return overlaps | |
| def non_max_suppression(boxes, scores, threshold): | |
| """Performs non-maximum suppression and returns indices of kept boxes. | |
| boxes: [N, (y1, x1, y2, x2)]. Notice that (y2, x2) lays outside the box. | |
| scores: 1-D array of box scores. | |
| threshold: Float. IoU threshold to use for filtering. | |
| """ | |
| assert boxes.shape[0] > 0 | |
| if boxes.dtype.kind != "f": | |
| boxes = boxes.astype(np.float32) | |
| # Compute box areas | |
| y1 = boxes[:, 0] | |
| x1 = boxes[:, 1] | |
| y2 = boxes[:, 2] | |
| x2 = boxes[:, 3] | |
| area = (y2 - y1) * (x2 - x1) | |
| # Get indicies of boxes sorted by scores (highest first) | |
| ixs = scores.argsort()[::-1] | |
| pick = [] | |
| while len(ixs) > 0: | |
| # Pick top box and add its index to the list | |
| i = ixs[0] | |
| pick.append(i) | |
| # Compute IoU of the picked box with the rest | |
| iou = compute_iou(boxes[i], boxes[ixs[1:]], area[i], area[ixs[1:]]) | |
| # Identify boxes with IoU over the threshold. This | |
| # returns indices into ixs[1:], so add 1 to get | |
| # indices into ixs. | |
| remove_ixs = np.where(iou > threshold)[0] + 1 | |
| # Remove indices of the picked and overlapped boxes. | |
| ixs = np.delete(ixs, remove_ixs) | |
| ixs = np.delete(ixs, 0) | |
| return np.array(pick, dtype=np.int32) | |
| def apply_box_deltas(boxes, deltas): | |
| """Applies the given deltas to the given boxes. | |
| boxes: [N, (y1, x1, y2, x2)]. Note that (y2, x2) is outside the box. | |
| deltas: [N, (dy, dx, log(dh), log(dw))] | |
| """ | |
| boxes = boxes.astype(np.float32) | |
| # Convert to y, x, h, w | |
| height = boxes[:, 2] - boxes[:, 0] | |
| width = boxes[:, 3] - boxes[:, 1] | |
| center_y = boxes[:, 0] + 0.5 * height | |
| center_x = boxes[:, 1] + 0.5 * width | |
| # Apply deltas | |
| center_y += deltas[:, 0] * height | |
| center_x += deltas[:, 1] * width | |
| height *= np.exp(deltas[:, 2]) | |
| width *= np.exp(deltas[:, 3]) | |
| # Convert back to y1, x1, y2, x2 | |
| y1 = center_y - 0.5 * height | |
| x1 = center_x - 0.5 * width | |
| y2 = y1 + height | |
| x2 = x1 + width | |
| return np.stack([y1, x1, y2, x2], axis=1) | |
| def box_refinement_graph(box, gt_box): | |
| """Compute refinement needed to transform box to gt_box. | |
| box and gt_box are [N, (y1, x1, y2, x2)] | |
| """ | |
| box = tf.cast(box, tf.float32) | |
| gt_box = tf.cast(gt_box, tf.float32) | |
| height = box[:, 2] - box[:, 0] | |
| width = box[:, 3] - box[:, 1] | |
| center_y = box[:, 0] + 0.5 * height | |
| center_x = box[:, 1] + 0.5 * width | |
| gt_height = gt_box[:, 2] - gt_box[:, 0] | |
| gt_width = gt_box[:, 3] - gt_box[:, 1] | |
| gt_center_y = gt_box[:, 0] + 0.5 * gt_height | |
| gt_center_x = gt_box[:, 1] + 0.5 * gt_width | |
| dy = (gt_center_y - center_y) / height | |
| dx = (gt_center_x - center_x) / width | |
| dh = tf.log(gt_height / height) | |
| dw = tf.log(gt_width / width) | |
| result = tf.stack([dy, dx, dh, dw], axis=1) | |
| return result | |
| def box_refinement(box, gt_box): | |
| """Compute refinement needed to transform box to gt_box. | |
| box and gt_box are [N, (y1, x1, y2, x2)]. (y2, x2) is | |
| assumed to be outside the box. | |
| """ | |
| box = box.astype(np.float32) | |
| gt_box = gt_box.astype(np.float32) | |
| height = box[:, 2] - box[:, 0] | |
| width = box[:, 3] - box[:, 1] | |
| center_y = box[:, 0] + 0.5 * height | |
| center_x = box[:, 1] + 0.5 * width | |
| gt_height = gt_box[:, 2] - gt_box[:, 0] | |
| gt_width = gt_box[:, 3] - gt_box[:, 1] | |
| gt_center_y = gt_box[:, 0] + 0.5 * gt_height | |
| gt_center_x = gt_box[:, 1] + 0.5 * gt_width | |
| dy = (gt_center_y - center_y) / height | |
| dx = (gt_center_x - center_x) / width | |
| dh = np.log(gt_height / height) | |
| dw = np.log(gt_width / width) | |
| return np.stack([dy, dx, dh, dw], axis=1) | |
| ############################################################ | |
| # Dataset | |
| ############################################################ | |
| class Dataset(object): | |
| """The base class for dataset classes. | |
| To use it, create a new class that adds functions specific to the dataset | |
| you want to use. For example: | |
| class CatsAndDogsDataset(Dataset): | |
| def load_cats_and_dogs(self): | |
| ... | |
| def load_mask(self, image_id): | |
| ... | |
| def image_reference(self, image_id): | |
| ... | |
| See COCODataset and ShapesDataset as examples. | |
| """ | |
| def __init__(self, class_map=None): | |
| self._image_ids = [] | |
| self.image_info = [] | |
| # Background is always the first class | |
| self.class_info = [{"source": "", "id": 0, "name": "BG"}] | |
| self.source_class_ids = {} | |
| def add_class(self, source, class_id, class_name): | |
| assert "." not in source, "Source name cannot contain a dot" | |
| # Does the class exist already? | |
| for info in self.class_info: | |
| if info['source'] == source and info["id"] == class_id: | |
| # source.class_id combination already available, skip | |
| return | |
| # Add the class | |
| self.class_info.append({ | |
| "source": source, | |
| "id": class_id, | |
| "name": class_name, | |
| }) | |
| def add_image(self, source, image_id, path, **kwargs): | |
| image_info = { | |
| "id": image_id, | |
| "source": source, | |
| "path": path, | |
| } | |
| image_info.update(kwargs) | |
| self.image_info.append(image_info) | |
| def image_reference(self, image_id): | |
| """Return a link to the image in its source Website or details about | |
| the image that help looking it up or debugging it. | |
| Override for your dataset, but pass to this function | |
| if you encounter images not in your dataset. | |
| """ | |
| return "" | |
| def prepare(self, class_map=None): | |
| """Prepares the Dataset class for use. | |
| TODO: class map is not supported yet. When done, it should handle mapping | |
| classes from different datasets to the same class ID. | |
| """ | |
| def clean_name(name): | |
| """Returns a shorter version of object names for cleaner display.""" | |
| return ",".join(name.split(",")[:1]) | |
| # Build (or rebuild) everything else from the info dicts. | |
| self.num_classes = len(self.class_info) | |
| self.class_ids = np.arange(self.num_classes) | |
| self.class_names = [clean_name(c["name"]) for c in self.class_info] | |
| self.num_images = len(self.image_info) | |
| self._image_ids = np.arange(self.num_images) | |
| # Mapping from source class and image IDs to internal IDs | |
| self.class_from_source_map = {"{}.{}".format(info['source'], info['id']): id | |
| for info, id in zip(self.class_info, self.class_ids)} | |
| self.image_from_source_map = {"{}.{}".format(info['source'], info['id']): id | |
| for info, id in zip(self.image_info, self.image_ids)} | |
| # Map sources to class_ids they support | |
| self.sources = list(set([i['source'] for i in self.class_info])) | |
| self.source_class_ids = {} | |
| # Loop over datasets | |
| for source in self.sources: | |
| self.source_class_ids[source] = [] | |
| # Find classes that belong to this dataset | |
| for i, info in enumerate(self.class_info): | |
| # Include BG class in all datasets | |
| if i == 0 or source == info['source']: | |
| self.source_class_ids[source].append(i) | |
| def map_source_class_id(self, source_class_id): | |
| """Takes a source class ID and returns the int class ID assigned to it. | |
| For example: | |
| dataset.map_source_class_id("coco.12") -> 23 | |
| """ | |
| return self.class_from_source_map[source_class_id] | |
| def get_source_class_id(self, class_id, source): | |
| """Map an internal class ID to the corresponding class ID in the source dataset.""" | |
| info = self.class_info[class_id] | |
| assert info['source'] == source | |
| return info['id'] | |
| def image_ids(self): | |
| return self._image_ids | |
| def source_image_link(self, image_id): | |
| """Returns the path or URL to the image. | |
| Override this to return a URL to the image if it's available online for easy | |
| debugging. | |
| """ | |
| return self.image_info[image_id]["path"] | |
| def load_image(self, image_id): | |
| """Load the specified image and return a [H,W,3] Numpy array. | |
| """ | |
| # Load image | |
| image = skimage.io.imread(self.image_info[image_id]['path']) | |
| # If grayscale. Convert to RGB for consistency. | |
| if image.ndim != 3: | |
| image = skimage.color.gray2rgb(image) | |
| # If has an alpha channel, remove it for consistency | |
| if image.shape[-1] == 4: | |
| image = image[..., :3] | |
| return image | |
| def load_mask(self, image_id): | |
| """Load instance masks for the given image. | |
| Different datasets use different ways to store masks. Override this | |
| method to load instance masks and return them in the form of am | |
| array of binary masks of shape [height, width, instances]. | |
| Returns: | |
| masks: A bool array of shape [height, width, instance count] with | |
| a binary mask per instance. | |
| class_ids: a 1D array of class IDs of the instance masks. | |
| """ | |
| # Override this function to load a mask from your dataset. | |
| # Otherwise, it returns an empty mask. | |
| logging.warning("You are using the default load_mask(), maybe you need to define your own one.") | |
| mask = np.empty([0, 0, 0]) | |
| class_ids = np.empty([0], np.int32) | |
| return mask, class_ids | |
| def resize_image(image, min_dim=None, max_dim=None, min_scale=None, mode="square"): | |
| """Resizes an image keeping the aspect ratio unchanged. | |
| min_dim: if provided, resizes the image such that it's smaller | |
| dimension == min_dim | |
| max_dim: if provided, ensures that the image longest side doesn't | |
| exceed this value. | |
| min_scale: if provided, ensure that the image is scaled up by at least | |
| this percent even if min_dim doesn't require it. | |
| mode: Resizing mode. | |
| none: No resizing. Return the image unchanged. | |
| square: Resize and pad with zeros to get a square image | |
| of size [max_dim, max_dim]. | |
| pad64: Pads width and height with zeros to make them multiples of 64. | |
| If min_dim or min_scale are provided, it scales the image up | |
| before padding. max_dim is ignored in this mode. | |
| The multiple of 64 is needed to ensure smooth scaling of feature | |
| maps up and down the 6 levels of the FPN pyramid (2**6=64). | |
| crop: Picks random crops from the image. First, scales the image based | |
| on min_dim and min_scale, then picks a random crop of | |
| size min_dim x min_dim. Can be used in training only. | |
| max_dim is not used in this mode. | |
| Returns: | |
| image: the resized image | |
| window: (y1, x1, y2, x2). If max_dim is provided, padding might | |
| be inserted in the returned image. If so, this window is the | |
| coordinates of the image part of the full image (excluding | |
| the padding). The x2, y2 pixels are not included. | |
| scale: The scale factor used to resize the image | |
| padding: Padding added to the image [(top, bottom), (left, right), (0, 0)] | |
| """ | |
| # Keep track of image dtype and return results in the same dtype | |
| image_dtype = image.dtype | |
| # Default window (y1, x1, y2, x2) and default scale == 1. | |
| h, w = image.shape[:2] | |
| window = (0, 0, h, w) | |
| scale = 1 | |
| padding = [(0, 0), (0, 0), (0, 0)] | |
| crop = None | |
| if mode == "none": | |
| return image, window, scale, padding, crop | |
| # Scale? | |
| if min_dim: | |
| # Scale up but not down | |
| scale = max(1, min_dim / min(h, w)) | |
| if min_scale and scale < min_scale: | |
| scale = min_scale | |
| # Does it exceed max dim? | |
| if max_dim and mode == "square": | |
| image_max = max(h, w) | |
| if round(image_max * scale) > max_dim: | |
| scale = max_dim / image_max | |
| # Resize image using bilinear interpolation | |
| if scale != 1: | |
| image = resize(image, (round(h * scale), round(w * scale)), | |
| preserve_range=True) | |
| # Need padding or cropping? | |
| if mode == "square": | |
| # Get new height and width | |
| h, w = image.shape[:2] | |
| top_pad = (max_dim - h) // 2 | |
| bottom_pad = max_dim - h - top_pad | |
| left_pad = (max_dim - w) // 2 | |
| right_pad = max_dim - w - left_pad | |
| padding = [(top_pad, bottom_pad), (left_pad, right_pad), (0, 0)] | |
| image = np.pad(image, padding, mode='constant', constant_values=0) | |
| window = (top_pad, left_pad, h + top_pad, w + left_pad) | |
| elif mode == "pad64": | |
| h, w = image.shape[:2] | |
| # Both sides must be divisible by 64 | |
| assert min_dim % 64 == 0, "Minimum dimension must be a multiple of 64" | |
| # Height | |
| if h % 64 > 0: | |
| max_h = h - (h % 64) + 64 | |
| top_pad = (max_h - h) // 2 | |
| bottom_pad = max_h - h - top_pad | |
| else: | |
| top_pad = bottom_pad = 0 | |
| # Width | |
| if w % 64 > 0: | |
| max_w = w - (w % 64) + 64 | |
| left_pad = (max_w - w) // 2 | |
| right_pad = max_w - w - left_pad | |
| else: | |
| left_pad = right_pad = 0 | |
| padding = [(top_pad, bottom_pad), (left_pad, right_pad), (0, 0)] | |
| image = np.pad(image, padding, mode='constant', constant_values=0) | |
| window = (top_pad, left_pad, h + top_pad, w + left_pad) | |
| elif mode == "crop": | |
| # Pick a random crop | |
| h, w = image.shape[:2] | |
| y = random.randint(0, (h - min_dim)) | |
| x = random.randint(0, (w - min_dim)) | |
| crop = (y, x, min_dim, min_dim) | |
| image = image[y:y + min_dim, x:x + min_dim] | |
| window = (0, 0, min_dim, min_dim) | |
| else: | |
| raise Exception("Mode {} not supported".format(mode)) | |
| return image.astype(image_dtype), window, scale, padding, crop | |
| def resize_mask(mask, scale, padding, crop=None): | |
| """Resizes a mask using the given scale and padding. | |
| Typically, you get the scale and padding from resize_image() to | |
| ensure both, the image and the mask, are resized consistently. | |
| scale: mask scaling factor | |
| padding: Padding to add to the mask in the form | |
| [(top, bottom), (left, right), (0, 0)] | |
| """ | |
| # Suppress warning from scipy 0.13.0, the output shape of zoom() is | |
| # calculated with round() instead of int() | |
| with warnings.catch_warnings(): | |
| warnings.simplefilter("ignore") | |
| mask = scipy.ndimage.zoom(mask, zoom=[scale, scale, 1], order=0) | |
| if crop is not None: | |
| y, x, h, w = crop | |
| mask = mask[y:y + h, x:x + w] | |
| else: | |
| mask = np.pad(mask, padding, mode='constant', constant_values=0) | |
| return mask | |
| def minimize_mask(bbox, mask, mini_shape): | |
| """Resize masks to a smaller version to reduce memory load. | |
| Mini-masks can be resized back to image scale using expand_masks() | |
| See inspect_data.ipynb notebook for more details. | |
| """ | |
| mini_mask = np.zeros(mini_shape + (mask.shape[-1],), dtype=bool) | |
| for i in range(mask.shape[-1]): | |
| # Pick slice and cast to bool in case load_mask() returned wrong dtype | |
| m = mask[:, :, i].astype(bool) | |
| y1, x1, y2, x2 = bbox[i][:4] | |
| m = m[y1:y2, x1:x2] | |
| if m.size == 0: | |
| raise Exception("Invalid bounding box with area of zero") | |
| # Resize with bilinear interpolation | |
| m = resize(m, mini_shape) | |
| mini_mask[:, :, i] = np.around(m).astype(np.bool) | |
| return mini_mask | |
| def expand_mask(bbox, mini_mask, image_shape): | |
| """Resizes mini masks back to image size. Reverses the change | |
| of minimize_mask(). | |
| See inspect_data.ipynb notebook for more details. | |
| """ | |
| mask = np.zeros(image_shape[:2] + (mini_mask.shape[-1],), dtype=bool) | |
| for i in range(mask.shape[-1]): | |
| m = mini_mask[:, :, i] | |
| y1, x1, y2, x2 = bbox[i][:4] | |
| h = y2 - y1 | |
| w = x2 - x1 | |
| # Resize with bilinear interpolation | |
| m = resize(m, (h, w)) | |
| mask[y1:y2, x1:x2, i] = np.around(m).astype(np.bool) | |
| return mask | |
| # TODO: Build and use this function to reduce code duplication | |
| def mold_mask(mask, config): | |
| pass | |
| def unmold_mask(mask, bbox, image_shape): | |
| """Converts a mask generated by the neural network to a format similar | |
| to its original shape. | |
| mask: [height, width] of type float. A small, typically 28x28 mask. | |
| bbox: [y1, x1, y2, x2]. The box to fit the mask in. | |
| Returns a binary mask with the same size as the original image. | |
| """ | |
| threshold = 0.5 | |
| y1, x1, y2, x2 = bbox | |
| mask = resize(mask, (y2 - y1, x2 - x1)) | |
| mask = np.where(mask >= threshold, 1, 0).astype(np.bool) | |
| # Put the mask in the right location. | |
| full_mask = np.zeros(image_shape[:2], dtype=np.bool) | |
| full_mask[y1:y2, x1:x2] = mask | |
| return full_mask | |
| ############################################################ | |
| # Anchors | |
| ############################################################ | |
| def generate_anchors(scales, ratios, shape, feature_stride, anchor_stride): | |
| """ | |
| scales: 1D array of anchor sizes in pixels. Example: [32, 64, 128] | |
| ratios: 1D array of anchor ratios of width/height. Example: [0.5, 1, 2] | |
| shape: [height, width] spatial shape of the feature map over which | |
| to generate anchors. | |
| feature_stride: Stride of the feature map relative to the image in pixels. | |
| anchor_stride: Stride of anchors on the feature map. For example, if the | |
| value is 2 then generate anchors for every other feature map pixel. | |
| """ | |
| # Get all combinations of scales and ratios | |
| scales, ratios = np.meshgrid(np.array(scales), np.array(ratios)) | |
| scales = scales.flatten() | |
| ratios = ratios.flatten() | |
| # Enumerate heights and widths from scales and ratios | |
| heights = scales / np.sqrt(ratios) | |
| widths = scales * np.sqrt(ratios) | |
| # Enumerate shifts in feature space | |
| shifts_y = np.arange(0, shape[0], anchor_stride) * feature_stride | |
| shifts_x = np.arange(0, shape[1], anchor_stride) * feature_stride | |
| shifts_x, shifts_y = np.meshgrid(shifts_x, shifts_y) | |
| # Enumerate combinations of shifts, widths, and heights | |
| box_widths, box_centers_x = np.meshgrid(widths, shifts_x) | |
| box_heights, box_centers_y = np.meshgrid(heights, shifts_y) | |
| # Reshape to get a list of (y, x) and a list of (h, w) | |
| box_centers = np.stack( | |
| [box_centers_y, box_centers_x], axis=2).reshape([-1, 2]) | |
| box_sizes = np.stack([box_heights, box_widths], axis=2).reshape([-1, 2]) | |
| # Convert to corner coordinates (y1, x1, y2, x2) | |
| boxes = np.concatenate([box_centers - 0.5 * box_sizes, | |
| box_centers + 0.5 * box_sizes], axis=1) | |
| return boxes | |
| def generate_pyramid_anchors(scales, ratios, feature_shapes, feature_strides, | |
| anchor_stride): | |
| """Generate anchors at different levels of a feature pyramid. Each scale | |
| is associated with a level of the pyramid, but each ratio is used in | |
| all levels of the pyramid. | |
| Returns: | |
| anchors: [N, (y1, x1, y2, x2)]. All generated anchors in one array. Sorted | |
| with the same order of the given scales. So, anchors of scale[0] come | |
| first, then anchors of scale[1], and so on. | |
| """ | |
| # Anchors | |
| # [anchor_count, (y1, x1, y2, x2)] | |
| anchors = [] | |
| for i in range(len(scales)): | |
| anchors.append(generate_anchors(scales[i], ratios, feature_shapes[i], | |
| feature_strides[i], anchor_stride)) | |
| return np.concatenate(anchors, axis=0) | |
| ############################################################ | |
| # Miscellaneous | |
| ############################################################ | |
| def trim_zeros(x): | |
| """It's common to have tensors larger than the available data and | |
| pad with zeros. This function removes rows that are all zeros. | |
| x: [rows, columns]. | |
| """ | |
| assert len(x.shape) == 2 | |
| return x[~np.all(x == 0, axis=1)] | |
| def compute_matches(gt_boxes, gt_class_ids, gt_masks, | |
| pred_boxes, pred_class_ids, pred_scores, pred_masks, | |
| iou_threshold=0.5, score_threshold=0.0): | |
| """Finds matches between prediction and ground truth instances. | |
| Returns: | |
| gt_match: 1-D array. For each GT box it has the index of the matched | |
| predicted box. | |
| pred_match: 1-D array. For each predicted box, it has the index of | |
| the matched ground truth box. | |
| overlaps: [pred_boxes, gt_boxes] IoU overlaps. | |
| """ | |
| # Trim zero padding | |
| # TODO: cleaner to do zero unpadding upstream | |
| gt_boxes = trim_zeros(gt_boxes) | |
| gt_masks = gt_masks[..., :gt_boxes.shape[0]] | |
| pred_boxes = trim_zeros(pred_boxes) | |
| pred_scores = pred_scores[:pred_boxes.shape[0]] | |
| # Sort predictions by score from high to low | |
| indices = np.argsort(pred_scores)[::-1] | |
| pred_boxes = pred_boxes[indices] | |
| pred_class_ids = pred_class_ids[indices] | |
| pred_scores = pred_scores[indices] | |
| pred_masks = pred_masks[..., indices] | |
| # Compute IoU overlaps [pred_masks, gt_masks] | |
| overlaps = compute_overlaps_masks(pred_masks, gt_masks) | |
| # Loop through predictions and find matching ground truth boxes | |
| match_count = 0 | |
| pred_match = -1 * np.ones([pred_boxes.shape[0]]) | |
| gt_match = -1 * np.ones([gt_boxes.shape[0]]) | |
| for i in range(len(pred_boxes)): | |
| # Find best matching ground truth box | |
| # 1. Sort matches by score | |
| sorted_ixs = np.argsort(overlaps[i])[::-1] | |
| # 2. Remove low scores | |
| low_score_idx = np.where(overlaps[i, sorted_ixs] < score_threshold)[0] | |
| if low_score_idx.size > 0: | |
| sorted_ixs = sorted_ixs[:low_score_idx[0]] | |
| # 3. Find the match | |
| for j in sorted_ixs: | |
| # If ground truth box is already matched, go to next one | |
| if gt_match[j] > -1: | |
| continue | |
| # If we reach IoU smaller than the threshold, end the loop | |
| iou = overlaps[i, j] | |
| if iou < iou_threshold: | |
| break | |
| # Do we have a match? | |
| if pred_class_ids[i] == gt_class_ids[j]: | |
| match_count += 1 | |
| gt_match[j] = i | |
| pred_match[i] = j | |
| break | |
| return gt_match, pred_match, overlaps | |
| def compute_ap(gt_boxes, gt_class_ids, gt_masks, | |
| pred_boxes, pred_class_ids, pred_scores, pred_masks, | |
| iou_threshold=0.5): | |
| """Compute Average Precision at a set IoU threshold (default 0.5). | |
| Returns: | |
| mAP: Mean Average Precision | |
| precisions: List of precisions at different class score thresholds. | |
| recalls: List of recall values at different class score thresholds. | |
| overlaps: [pred_boxes, gt_boxes] IoU overlaps. | |
| """ | |
| # Get matches and overlaps | |
| gt_match, pred_match, overlaps = compute_matches( | |
| gt_boxes, gt_class_ids, gt_masks, | |
| pred_boxes, pred_class_ids, pred_scores, pred_masks, | |
| iou_threshold) | |
| # Compute precision and recall at each prediction box step | |
| precisions = np.cumsum(pred_match > -1) / (np.arange(len(pred_match)) + 1) | |
| recalls = np.cumsum(pred_match > -1).astype(np.float32) / len(gt_match) | |
| # Pad with start and end values to simplify the math | |
| precisions = np.concatenate([[0], precisions, [0]]) | |
| recalls = np.concatenate([[0], recalls, [1]]) | |
| # Ensure precision values decrease but don't increase. This way, the | |
| # precision value at each recall threshold is the maximum it can be | |
| # for all following recall thresholds, as specified by the VOC paper. | |
| for i in range(len(precisions) - 2, -1, -1): | |
| precisions[i] = np.maximum(precisions[i], precisions[i + 1]) | |
| # Compute mean AP over recall range | |
| indices = np.where(recalls[:-1] != recalls[1:])[0] + 1 | |
| mAP = np.sum((recalls[indices] - recalls[indices - 1]) * | |
| precisions[indices]) | |
| return mAP, precisions, recalls, overlaps | |
| def compute_ap_range(gt_box, gt_class_id, gt_mask, | |
| pred_box, pred_class_id, pred_score, pred_mask, | |
| iou_thresholds=None, verbose=1): | |
| """Compute AP over a range or IoU thresholds. Default range is 0.5-0.95.""" | |
| # Default is 0.5 to 0.95 with increments of 0.05 | |
| iou_thresholds = iou_thresholds or np.arange(0.5, 1.0, 0.05) | |
| # Compute AP over range of IoU thresholds | |
| AP = [] | |
| for iou_threshold in iou_thresholds: | |
| ap, precisions, recalls, overlaps =\ | |
| compute_ap(gt_box, gt_class_id, gt_mask, | |
| pred_box, pred_class_id, pred_score, pred_mask, | |
| iou_threshold=iou_threshold) | |
| if verbose: | |
| print("AP @{:.2f}:\t {:.3f}".format(iou_threshold, ap)) | |
| AP.append(ap) | |
| AP = np.array(AP).mean() | |
| if verbose: | |
| print("AP @{:.2f}-{:.2f}:\t {:.3f}".format( | |
| iou_thresholds[0], iou_thresholds[-1], AP)) | |
| return AP | |
| def compute_recall(pred_boxes, gt_boxes, iou): | |
| """Compute the recall at the given IoU threshold. It's an indication | |
| of how many GT boxes were found by the given prediction boxes. | |
| pred_boxes: [N, (y1, x1, y2, x2)] in image coordinates | |
| gt_boxes: [N, (y1, x1, y2, x2)] in image coordinates | |
| """ | |
| # Measure overlaps | |
| overlaps = compute_overlaps(pred_boxes, gt_boxes) | |
| iou_max = np.max(overlaps, axis=1) | |
| iou_argmax = np.argmax(overlaps, axis=1) | |
| positive_ids = np.where(iou_max >= iou)[0] | |
| matched_gt_boxes = iou_argmax[positive_ids] | |
| recall = len(set(matched_gt_boxes)) / gt_boxes.shape[0] | |
| return recall, positive_ids | |
| # ## Batch Slicing | |
| # Some custom layers support a batch size of 1 only, and require a lot of work | |
| # to support batches greater than 1. This function slices an input tensor | |
| # across the batch dimension and feeds batches of size 1. Effectively, | |
| # an easy way to support batches > 1 quickly with little code modification. | |
| # In the long run, it's more efficient to modify the code to support large | |
| # batches and getting rid of this function. Consider this a temporary solution | |
| def batch_slice(inputs, graph_fn, batch_size, names=None): | |
| """Splits inputs into slices and feeds each slice to a copy of the given | |
| computation graph and then combines the results. It allows you to run a | |
| graph on a batch of inputs even if the graph is written to support one | |
| instance only. | |
| inputs: list of tensors. All must have the same first dimension length | |
| graph_fn: A function that returns a TF tensor that's part of a graph. | |
| batch_size: number of slices to divide the data into. | |
| names: If provided, assigns names to the resulting tensors. | |
| """ | |
| if not isinstance(inputs, list): | |
| inputs = [inputs] | |
| outputs = [] | |
| for i in range(batch_size): | |
| inputs_slice = [x[i] for x in inputs] | |
| output_slice = graph_fn(*inputs_slice) | |
| if not isinstance(output_slice, (tuple, list)): | |
| output_slice = [output_slice] | |
| outputs.append(output_slice) | |
| # Change outputs from a list of slices where each is | |
| # a list of outputs to a list of outputs and each has | |
| # a list of slices | |
| outputs = list(zip(*outputs)) | |
| if names is None: | |
| names = [None] * len(outputs) | |
| result = [tf.stack(o, axis=0, name=n) | |
| for o, n in zip(outputs, names)] | |
| if len(result) == 1: | |
| result = result[0] | |
| return result | |
| def download_trained_weights(coco_model_path, verbose=1): | |
| """Download COCO trained weights from Releases. | |
| coco_model_path: local path of COCO trained weights | |
| """ | |
| if verbose > 0: | |
| print("Downloading pretrained model to " + coco_model_path + " ...") | |
| with urllib.request.urlopen(COCO_MODEL_URL) as resp, open(coco_model_path, 'wb') as out: | |
| shutil.copyfileobj(resp, out) | |
| if verbose > 0: | |
| print("... done downloading pretrained model!") | |
| def norm_boxes(boxes, shape): | |
| """Converts boxes from pixel coordinates to normalized coordinates. | |
| boxes: [N, (y1, x1, y2, x2)] in pixel coordinates | |
| shape: [..., (height, width)] in pixels | |
| Note: In pixel coordinates (y2, x2) is outside the box. But in normalized | |
| coordinates it's inside the box. | |
| Returns: | |
| [N, (y1, x1, y2, x2)] in normalized coordinates | |
| """ | |
| h, w = shape | |
| scale = np.array([h - 1, w - 1, h - 1, w - 1]) | |
| shift = np.array([0, 0, 1, 1]) | |
| return np.divide((boxes - shift), scale).astype(np.float32) | |
| def denorm_boxes(boxes, shape): | |
| """Converts boxes from normalized coordinates to pixel coordinates. | |
| boxes: [N, (y1, x1, y2, x2)] in normalized coordinates | |
| shape: [..., (height, width)] in pixels | |
| Note: In pixel coordinates (y2, x2) is outside the box. But in normalized | |
| coordinates it's inside the box. | |
| Returns: | |
| [N, (y1, x1, y2, x2)] in pixel coordinates | |
| """ | |
| h, w = shape | |
| scale = np.array([h - 1, w - 1, h - 1, w - 1]) | |
| shift = np.array([0, 0, 1, 1]) | |
| return np.around(np.multiply(boxes, scale) + shift).astype(np.int32) | |
| def resize(image, output_shape, order=1, mode='constant', cval=0, clip=True, | |
| preserve_range=False, anti_aliasing=False, anti_aliasing_sigma=None): | |
| """A wrapper for Scikit-Image resize(). | |
| Scikit-Image generates warnings on every call to resize() if it doesn't | |
| receive the right parameters. The right parameters depend on the version | |
| of skimage. This solves the problem by using different parameters per | |
| version. And it provides a central place to control resizing defaults. | |
| """ | |
| if LooseVersion(skimage.__version__) >= LooseVersion("0.14"): | |
| # New in 0.14: anti_aliasing. Default it to False for backward | |
| # compatibility with skimage 0.13. | |
| return skimage.transform.resize( | |
| image, output_shape, | |
| order=order, mode=mode, cval=cval, clip=clip, | |
| preserve_range=preserve_range, anti_aliasing=anti_aliasing, | |
| anti_aliasing_sigma=anti_aliasing_sigma) | |
| else: | |
| return skimage.transform.resize( | |
| image, output_shape, | |
| order=order, mode=mode, cval=cval, clip=clip, | |
| preserve_range=preserve_range) | |