This model presents a person attributes classification algorithm analysis scenario. The model consists of the ResNet-50 backbone and a head. For an input image with a pedestrian the model returns 7 values that are probabilities of the corresponding 7 attributes.
Metric | Value |
---|---|
Pedestrian pose | Standing person |
Occlusion coverage | <20% |
Min object width | 80 pixels |
Supported attributes | is_male , has_bag , has_hat , has_longsleeves , has_longpants , has_longhair , has_coat_jacket |
GFlops | 2.167 |
MParams | 23.510 |
Source framework | PyTorch* |
Attribute | F1 |
---|---|
is_male |
0.92 |
has_bag |
0.44 |
has_hat |
0.74 |
has_longsleeves |
0.45 |
has_longpants |
0.89 |
has_longhair |
0.84 |
has_coat_jacket |
NA |
Image, name: input
, shape: 1, 3, 160, 80
in the format 1, C, H, W
, where:
C
- number of channelsH
- image heightW
- image width
The expected color order is BGR
.
The net output is a blob named attributes
with shape 1, 7
across seven attributes:
[is_male
, has_bag
, has_hat
, has_longsleeves
, has_longpants
, has_longhair
,
has_coat_jacket
].
Value > 0.5 means that the corresponding attribute is present.
[*] Other names and brands may be claimed as the property of others.