This is a person, vehicle, bike detector that is based on MobileNetV2 backbone with two SSD heads from 1/16 and 1/8 scale feature maps and clustered prior boxes for 384x384 resolution.
Metric | Value |
---|---|
AP @ [ IoU=0.50:0.95 ] | 0.2259 (internal test set) |
GFlops | 1.770 |
MParams | 1.821 |
Source framework | PyTorch* |
Average Precision (AP) is defined as an area under the precision/recall curve.
Image, name: image
, shape: 1, 3, 384, 384
in the format B, C, H, W
, where:
B
- batch sizeC
- number of channelsH
- image heightW
- image width
Expected color order is BGR
.
The net outputs blob with shape: 1, 1, 200, 7
in the format 1, 1, N, 7
, where N
is the number of detected
bounding boxes. Each detection has the format [image_id
, label
, conf
, x_min
, y_min
, x_max
, y_max
], where:
image_id
- ID of the image in the batchlabel
- predicted class ID (0 - vehicle, 1 - person, 2 - bike)conf
- confidence for the predicted class- (
x_min
,y_min
) - coordinates of the top left bounding box corner - (
x_max
,y_max
) - coordinates of the bottom right bounding box corner
The OpenVINO Training Extensions provide a training pipeline, allowing to fine-tune the model on custom dataset.
The model can be used in the following demos provided by the Open Model Zoo to show its capabilities:
[*] Other names and brands may be claimed as the property of others.