import os import sys import itertools import math import logging import json import re import random from collections import OrderedDict import numpy as np import matplotlib import matplotlib.pyplot as plt import matplotlib.patches as patches import matplotlib.lines as lines from matplotlib.patches import Polygon import utils import visualize from visualize import display_images import model as modellib from model import log %matplotlib inline ROOT_DIR = os.getcwd()
# Run one of the code blocks # Shapes toy dataset # import shapes # config = shapes.ShapesConfig() # MS COCO Dataset import coco config = coco.CocoConfig() COCO_DIR = "path to COCO dataset" # TODO: enter value here
# Load dataset if config.NAME == 'shapes': dataset = shapes.ShapesDataset() dataset.load_shapes(500, config.IMAGE_SHAPE[0], config.IMAGE_SHAPE[1]) elif config.NAME == "coco": dataset = coco.CocoDataset() dataset.load_coco(COCO_DIR, "train") # Must call before using the dataset dataset.prepare() print("Image Count: {}".format(len(dataset.image_ids))) print("Class Count: {}".format(dataset.num_classes)) for i, info in enumerate(dataset.class_info): print("{:3}. {:50}".format(i, info['name']))
# Load and display random samples image_ids = np.random.choice(dataset.image_ids, 4) for image_id in image_ids: image = dataset.load_image(image_id) mask, class_ids = dataset.load_mask(image_id) visualize.display_top_masks(image, mask, class_ids, dataset.class_names)
# Load random image and mask. image_id = random.choice(dataset.image_ids) image = dataset.load_image(image_id) mask, class_ids = dataset.load_mask(image_id) # Compute Bounding box bbox = utils.extract_bboxes(mask) # Display image and additional stats print("image_id ", image_id, dataset.image_reference(image_id)) log("image", image) log("mask", mask) log("class_ids", class_ids) log("bbox", bbox) # Display image and instances visualize.display_instances(image, bbox, mask, class_ids, dataset.class_names)
# Load random image and mask. image_id = np.random.choice(dataset.image_ids, 1)[0] image = dataset.load_image(image_id) mask, class_ids = dataset.load_mask(image_id) original_shape = image.shape # Resize 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) # Compute Bounding box bbox = utils.extract_bboxes(mask) # Display image and additional stats print("image_id: ", image_id, dataset.image_reference(image_id)) print("Original shape: ", original_shape) log("image", image) log("mask", mask) log("class_ids", class_ids) log("bbox", bbox) # Display image and instances visualize.display_instances(image, bbox, mask, class_ids, dataset.class_names)
image_id = np.random.choice(dataset.image_ids, 1)[0] image, image_meta, class_ids, bbox, mask = modellib.load_image_gt( dataset, config, image_id, use_mini_mask=False) log("image", image) log("image_meta", image_meta) log("class_ids", class_ids) log("bbox", bbox) log("mask", mask) display_images([image]+[mask[:,:,i] for i in range(min(mask.shape[-1], 7))])
visualize.display_instances(image, bbox, mask, class_ids, dataset.class_names)
# Add augmentation and mask resizing. image, image_meta, class_ids, bbox, mask = modellib.load_image_gt( dataset, config, image_id, augment=True, use_mini_mask=True) log("mask", mask) display_images([image]+[mask[:,:,i] for i in range(min(mask.shape[-1], 7))])
mask = utils.expand_mask(bbox, mask, image.shape)
visualize.display_instances(image, bbox, mask, class_ids, dataset.class_names)
# Generate Anchors anchors = utils.generate_pyramid_anchors(config.RPN_ANCHOR_SCALES, config.RPN_ANCHOR_RATIOS, config.BACKBONE_SHAPES, config.BACKBONE_STRIDES, config.RPN_ANCHOR_STRIDE) # Print summary of anchors num_levels = len(config.BACKBONE_SHAPES) anchors_per_cell = len(config.RPN_ANCHOR_RATIOS) print("Count: ", anchors.shape[0]) print("Scales: ", config.RPN_ANCHOR_SCALES) print("ratios: ", config.RPN_ANCHOR_RATIOS) print("Anchors per Cell: ", anchors_per_cell) print("Levels: ", num_levels) anchors_per_level = [] for l in range(num_levels): num_cells = config.BACKBONE_SHAPES[l][0] * config.BACKBONE_SHAPES[l][1] anchors_per_level.append(anchors_per_cell * num_cells // config.RPN_ANCHOR_STRIDE**2) print("Anchors in Level {}: {}".format(l, anchors_per_level[l]))
## Visualize anchors of one cell at the center of the feature map of a specific level # Load and draw random image image_id = np.random.choice(dataset.image_ids, 1)[0] image, image_meta, _, _, _ = modellib.load_image_gt(dataset, config, image_id) fig, ax = plt.subplots(1, figsize=(10, 10)) ax.imshow(image) levels = len(config.BACKBONE_SHAPES) for level in range(levels): colors = visualize.random_colors(levels) # Compute the index of the anchors at the center of the image level_start = sum(anchors_per_level[:level]) # sum of anchors of previous levels level_anchors = anchors[level_start:level_start+anchors_per_level[level]] print("Level {}. Anchors: {:6} Feature map Shape: {}".format(level, level_anchors.shape[0], config.BACKBONE_SHAPES[level])) center_cell = config.BACKBONE_SHAPES[level] // 2 center_cell_index = (center_cell[0] * config.BACKBONE_SHAPES[level][1] + center_cell[1]) level_center = center_cell_index * anchors_per_cell center_anchor = anchors_per_cell * ( (center_cell[0] * config.BACKBONE_SHAPES[level][1] / config.RPN_ANCHOR_STRIDE**2) \ + center_cell[1] / config.RPN_ANCHOR_STRIDE) level_center = int(center_anchor) # Draw anchors. Brightness show the order in the array, dark to bright. for i, rect in enumerate(level_anchors[level_center:level_center+anchors_per_cell]): y1, x1, y2, x2 = rect p = patches.Rectangle((x1, y1), x2-x1, y2-y1, linewidth=2, facecolor='none', edgecolor=(i+1)*np.array(colors[level]) / anchors_per_cell) ax.add_patch(p)
# Create data generator random_rois = 2000 g = modellib.data_generator( dataset, config, shuffle=True, random_rois=random_rois, batch_size=4, detection_targets=True)
# Get Next Image if random_rois: [normalized_images, image_meta, rpn_match, rpn_bbox, gt_class_ids, gt_boxes, gt_masks, rpn_rois, rois], \ [mrcnn_class_ids, mrcnn_bbox, mrcnn_mask] = next(g) log("rois", rois) log("mrcnn_class_ids", mrcnn_class_ids) log("mrcnn_bbox", mrcnn_bbox) log("mrcnn_mask", mrcnn_mask) else: [normalized_images, image_meta, rpn_match, rpn_bbox, gt_boxes, gt_masks], _ = next(g) log("gt_class_ids", gt_class_ids) log("gt_boxes", gt_boxes) log("gt_masks", gt_masks) log("rpn_match", rpn_match, ) log("rpn_bbox", rpn_bbox) image_id = image_meta[0][0] print("image_id: ", image_id, dataset.image_reference(image_id)) # Remove the last dim in mrcnn_class_ids. It's only added # to satisfy Keras restriction on target shape. mrcnn_class_ids = mrcnn_class_ids[:,:,0]
b = 0 # Restore original image (reverse normalization) sample_image = modellib.unmold_image(normalized_images[b], config) # Compute anchor shifts. indices = np.where(rpn_match[b] == 1)[0] refined_anchors = utils.apply_box_deltas(anchors[indices], rpn_bbox[b, :len(indices)] * config.RPN_BBOX_STD_DEV) log("anchors", anchors) log("refined_anchors", refined_anchors) # Get list of positive anchors positive_anchor_ids = np.where(rpn_match[b] == 1)[0] print("Positive anchors: {}".format(len(positive_anchor_ids))) negative_anchor_ids = np.where(rpn_match[b] == -1)[0] print("Negative anchors: {}".format(len(negative_anchor_ids))) neutral_anchor_ids = np.where(rpn_match[b] == 0)[0] print("Neutral anchors: {}".format(len(neutral_anchor_ids))) # ROI breakdown by class for c, n in zip(dataset.class_names, np.bincount(mrcnn_class_ids[b].flatten())): if n: print("{:23}: {}".format(c[:20], n)) # Show positive anchors visualize.draw_boxes(sample_image, boxes=anchors[positive_anchor_ids], refined_boxes=refined_anchors)
# Show negative anchors visualize.draw_boxes(sample_image, boxes=anchors[negative_anchor_ids])
# Show neutral anchors. They don't contribute to training. visualize.draw_boxes(sample_image, boxes=anchors[np.random.choice(neutral_anchor_ids, 100)])
if random_rois: # Class aware bboxes bbox_specific = mrcnn_bbox[b, np.arange(mrcnn_bbox.shape[1]), mrcnn_class_ids[b], :] # Refined ROIs refined_rois = utils.apply_box_deltas(rois[b].astype(np.float32), bbox_specific[:,:4] * config.BBOX_STD_DEV) # Class aware masks mask_specific = mrcnn_mask[b, np.arange(mrcnn_mask.shape[1]), :, :, mrcnn_class_ids[b]] visualize.draw_rois(sample_image, rois[b], refined_rois, mask_specific, mrcnn_class_ids[b], dataset.class_names) # Any repeated ROIs? rows = np.ascontiguousarray(rois[b]).view(np.dtype((np.void, rois.dtype.itemsize * rois.shape[-1]))) _, idx = np.unique(rows, return_index=True) print("Unique ROIs: {} out of {}".format(len(idx), rois.shape[1]))
if random_rois: # Dispalay ROIs and corresponding masks and bounding boxes ids = random.sample(range(rois.shape[1]), 8) images = [] titles = [] for i in ids: image = visualize.draw_box(sample_image.copy(), rois[b,i,:4].astype(np.int32), [255, 0, 0]) image = visualize.draw_box(image, refined_rois[i].astype(np.int64), [0, 255, 0]) images.append(image) titles.append("ROI {}".format(i)) images.append(mask_specific[i] * 255) titles.append(dataset.class_names[mrcnn_class_ids[b,i]][:20]) display_images(images, titles, cols=4, cmap="Blues", interpolation="none")
# Check ratio of positive ROIs in a set of images. if random_rois: limit = 10 temp_g = modellib.data_generator( dataset, config, shuffle=True, random_rois=10000, batch_size=1, detection_targets=True) total = 0 for i in range(limit): _, [ids, _, _] = next(temp_g) positive_rois = np.sum(ids[0] > 0) total += positive_rois print("{:5} {:5.2f}".format(positive_rois, positive_rois/ids.shape[1])) print("Average percent: {:.2f}".format(total/(limit*ids.shape[1])))