Kentaro Wada de7c63c3ff Remove --validatelabel instance 5 rokov pred
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.readme 01f10365f4 Update README.md 6 rokov pred
data_annotated 9a191df998 Colorize shapes according to uniqLabelList 5 rokov pred
data_dataset_coco c1b1543e86 Fix labelme2coco.py to parse with pycocotools 6 rokov pred
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README.md de7c63c3ff Remove --validatelabel instance 5 rokov pred
labelme2coco.py 612b40df6f Update labelme2voc.py and labelme2coco.py accordingly 5 rokov pred
labelme2voc.py 612b40df6f Update labelme2voc.py and labelme2coco.py accordingly 5 rokov pred
labels.txt 4f2e652483 Add examples/instance_segmentation 7 rokov pred

README.md

Instance Segmentation Example

Annotation

labelme data_annotated --labels labels.txt --nodata --validatelabel exact
labelme data_annotated --labels labels.txt --nodata --labelflags '{.*: [occluded, truncated], person-\d+: [male]}'

Convert to VOC-format Dataset

# It generates:
#   - data_dataset_voc/JPEGImages
#   - data_dataset_voc/SegmentationClass
#   - data_dataset_voc/SegmentationClassVisualization
#   - data_dataset_voc/SegmentationObject
#   - data_dataset_voc/SegmentationObjectVisualization
./labelme2voc.py data_annotated data_dataset_voc --labels labels.txt


Fig 1. JPEG image (left), JPEG class label visualization (center), JPEG instance label visualization (right)

Note that the label file contains only very low label values (ex. 0, 4, 14), and 255 indicates the __ignore__ label value (-1 in the npy file).
You can see the label PNG file by following.

labelme_draw_label_png data_dataset_voc/SegmentationClassPNG/2011_000003.png   # left
labelme_draw_label_png data_dataset_voc/SegmentationObjectPNG/2011_000003.png  # right

Convert to COCO-format Dataset

# It generates:
#   - data_dataset_coco/JPEGImages
#   - data_dataset_coco/annotations.json
./labelme2coco.py data_annotated data_dataset_coco --labels labels.txt