semantic-segmentation-adas-0001¶
Use Case and High-Level Description¶
This is a segmentation network to classify each pixel into 20 classes:
road
sidewalk
building
wall
fence
pole
traffic light
traffic sign
vegetation
terrain
sky
person
rider
car
truck
bus
train
motorcycle
bicycle
ego-vehicle
Example¶
Specification¶
Metric |
Value |
---|---|
Image size |
2048x1024 |
GFlops |
58.572 |
MParams |
6.686 |
Source framework |
Caffe* |
Accuracy¶
The quality metrics calculated on 2000 images:
Label |
IOU |
---|---|
mean |
0.6907 |
Road |
0.910379 |
Sidewalk |
0.630676 |
Building |
0.860139 |
Wall |
0.424166 |
Fence |
0.592632 |
Pole |
0.559078 |
Traffic Light |
0.654779 |
Traffic Sign |
0.648217 |
Vegetation |
0.882593 |
Terrain |
0.620521 |
Sky |
0.976889 |
Person |
0.711653 |
Rider |
0.612787 |
Car |
0.877892 |
Truck |
0.674829 |
Bus |
0.743752 |
Train |
0.358641 |
Motorcycle |
0.600701 |
Bicycle |
0.622246 |
Ego-Vehicle |
0.852932 |
IOU=TP/(TP+FN+FP)
, where:TP
- number of true positive pixels for given classFN
- number of false negative pixels for given classFP
- number of false positive pixels for given class
Inputs¶
The blob with BGR
image and the shape 1, 3, 1024, 2048
in the format B, C, H, W
, where:
B
– batch sizeC
– number of channelsH
– image heightW
– image width
Outputs¶
The net output is a blob with the shape 1, 1, 1024, 2048
in the format B, C, H, W
. It can be treated as a
one-channel feature map, where each pixel is a label of one of the classes.
Demo usage¶
The model can be used in the following demos provided by the Open Model Zoo to show its capabilities:
Legal Information¶
[*] Other names and brands may be claimed as the property of others.