person-detection-retail-0002¶
Use Case and High-Level Description¶
This is a pedestrian detector based on backbone with hyper-feature + R-FCN for the Retail scenario.
Example¶
Specification¶
Metric |
Value |
|---|---|
AP |
80.14% |
Pose coverage |
Standing upright, parallel to image plane |
Support of occluded pedestrians |
YES |
Occlusion coverage |
<50% |
Min pedestrian height |
80 pixels (on 1080p) |
Max objects to detect |
200 |
GFlops |
12.427 |
MParams |
3.244 |
Source framework |
Caffe* |
Average Precision (AP) is defined as an area under the precision/recall curve. Validation dataset consists of ~50K of images from ~100 different scenes.
Inputs¶
Image, name:
data, shape:1, 3, 544, 992in format1, C, H, W, where:C- number of channelsH- image heightW- image width
The expected channel order is
BGR.name:
im_info, shape:1, 6- An image information [544, 992, 992/frame_width, 544/frame_height, 992/frame_width, 544/frame_height]
Outputs¶
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 (1 - person)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
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.