This is a vehicle detection network based on an SSD framework with tuned MobileNet v1 as a feature extractor.
Metric | Value |
---|---|
Average Precision (AP) | 90.6% |
Target vehicle size | 40 x 30 pixels on Full HD image |
Max objects to detect | 200 |
GFlops | 2.798 |
MParams | 1.079 |
Source framework | Caffe* |
Average Precision metric described in: Mark Everingham et al. "The PASCAL Visual Object Classes (VOC) Challenge".
Tested on a challenging internal dataset with 3000 images and 12585 vehicles to detect.
Link to performance table
- name: "input" , shape: [1x3x384x672] - An input image in the format [BxCxHxW],
where:
- B - batch size
- C - number of channels
- H - image height
- W - image width. Expected color order is BGR.
- The net outputs a blob with the shape: [1, 1, N, 7], where N is the number of detected
bounding boxes. For each detection, the description has the format:
[
image_id
,label
,conf
,x_min
,y_min
,x_max
,y_max
]image_id
- ID of the image in the batchlabel
- predicted class IDconf
- 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.
[*] Other names and brands may be claimed as the property of others.