Ultra-lightweight Face Detection slim 320 is a version of the lightweight face detection model with network backbone simplification. The model designed for edge computing devices and pre-trained on the WIDER FACE dataset with 320x240 input resolutions.
For details see repository.
Metric | Value |
---|---|
Type | Object detection |
GFLOPs | 0.1724 |
MParams | 0.2844 |
Source framework | PyTorch* |
Metric | Value |
---|---|
mAP | 83.32% |
Image, name - input
, shape - 1, 3, 240, 320
, format B, C, H, W
, where:
B
- batch sizeC
- number of channelsH
- image heightW
- image width
Expected color order is RGB
.
Mean values - [127.0, 127.0, 127.0]. Scale values - [128.0, 128.0, 128.0].
Image, name - input
, shape - 1, 3, 240, 320
, format B, C, H, W
, where:
B
- batch sizeC
- number of channelsH
- image heightW
- image width
Expected color order is BGR
.
-
Bounding boxes, name:
boxes
, shape -1, 4420, 4
. Presented in formatB, A, 4
, where:B
- batch sizeA
- number of detected anchors
For each detection, the description has the format: [
x_min
,y_min
,x_max
,y_max
], where:- (
x_min
,y_min
) - coordinates of the top left bounding box corner (coordinates are in normalized format, in range [0, 1]) - (
x_max
,y_max
) - coordinates of the bottom right bounding box corner (coordinates are in normalized format, in range [0, 1])
-
Scores, name:
scores
, shape -1, 4420, 2
. Contains scores for 2 classes - the first is background, the second is face.
-
Bounding boxes, name:
boxes
, shape -1, 4420, 4
. Presented in formatB, A, 4
, where:B
- batch sizeA
- number of detected anchors
For each detection, the description has the format: [
x_min
,y_min
,x_max
,y_max
], where:- (
x_min
,y_min
) - coordinates of the top left bounding box corner (coordinates are in normalized format, in range [0, 1]) - (
x_max
,y_max
) - coordinates of the bottom right bounding box corner (coordinates are in normalized format, in range [0, 1])
-
Scores, name:
scores
, shape -1, 4420, 2
. Contains scores for 2 classes - the first is background, the second is face.
You can download models and if necessary convert them into OpenVINO™ IR format using the Model Downloader and other automation tools as shown in the examples below.
An example of using the Model Downloader:
omz_downloader --name <model_name>
An example of using the Model Converter:
omz_converter --name <model_name>
The model can be used in the following demos provided by the Open Model Zoo to show its capabilities:
The original model is released under the following license:
MIT License
Copyright (c) 2019 linzai
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