PriorBox¶
Versioned name: PriorBox-1
Category: Object detection
Short description: PriorBox operation generates prior boxes of specified sizes and aspect ratios across all dimensions.
Detailed description:
PriorBox computes coordinates of prior boxes by following:
First calculates center_x and center_y of prior box:
If step equals 0:
else:
Then, for each \(s \subset \left( 0, min\_sizes \right )\) calculates coordinates of prior boxes:
If clip attribute is set to true, each output value is clipped between \(\left< 0, 1 \right>\).
Attributes:
min_size (max_size)
Description: min_size (max_size) is the minimum (maximum) box size (in pixels).
Range of values: positive floating-point numbers
Type:
float[]
Default value: []
Required: no
aspect_ratio
Description: aspect_ratio is a variance of aspect ratios. Duplicate values are ignored.
Range of values: set of positive integer numbers
Type:
float[]
Default value: []
Required: no
flip
Description: flip is a flag that denotes that each aspect_ratio is duplicated and flipped. For example, flip equals 1 and aspect_ratio equals to
[4.0,2.0]
mean that aspect_ratio is equal to[4.0,2.0,0.25,0.5]
.Range of values:
false or 0 - each aspect_ratio is flipped
true or 1 - each aspect_ratio is not flipped
Type:
boolean
Default value: false
Required: no
clip
Description: clip is a flag that denotes if each value in the output tensor should be clipped to
[0,1]
interval.Range of values:
false or 0 - clipping is not performed
true or 1 - each value in the output tensor is clipped to
[0,1]
interval.
Type:
boolean
Default value: false
Required: no
step
Description: step is a distance between box centers.
Range of values: floating-point non-negative number
Type:
float
Default value: 0
Required: no
offset
Description: offset is a shift of box respectively to top left corner.
Range of values: floating-point non-negative number
Type:
float
Required: yes
variance
Description: variance denotes a variance of adjusting bounding boxes. The attribute could contain 0, 1 or 4 elements.
Range of values: floating-point positive numbers
Type:
float[]
Default value: []
Required: no
scale_all_sizes
Description: scale_all_sizes is a flag that denotes type of inference. For example, scale_all_sizes equals 0 means that max_size attribute is ignored.
Range of values:
false - max_size is ignored
true - max_size is used
Type:
boolean
Default value: true
Required: no
fixed_ratio
Description: fixed_ratio is an aspect ratio of a box.
Range of values: a list of positive floating-point numbers
Type:
float[]
Default value: []
Required: no
fixed_size
Description: fixed_size is an initial box size (in pixels).
Range of values: a list of positive floating-point numbers
Type:
float[]
Default value: []
Required: no
density
Description: density is the square root of the number of boxes of each type.
Range of values: a list of positive floating-point numbers
Type:
float[]
Default value: []
Required: no
Inputs:
1:
output_size
- 1D tensor of type T_INT with two elements[height, width]
. Specifies the spatial size of generated grid with boxes. Required.2:
image_size
- 1D tensor of type T_INT with two elements[image_height, image_width]
that specifies shape of the image for which boxes are generated. Required.
Outputs:
1: 2D tensor of shape
[2, 4 * height * width * priors_per_point]
and type T_OUT with box coordinates. Thepriors_per_point
is the number of boxes generated per each grid element. The number depends on operation attribute values.
Types
T_INT: any supported integer type.
T_OUT: supported floating-point type.
Example
<layer type="PriorBox" ...>
<data aspect_ratio="2.0" clip="false" density="" fixed_ratio="" fixed_size="" flip="true" max_size="38.46" min_size="16.0" offset="0.5" step="16.0" variance="0.1,0.1,0.2,0.2"/>
<input>
<port id="0">
<dim>2</dim> <!-- values: [24, 42] -->
</port>
<port id="1">
<dim>2</dim> <!-- values: [384, 672] -->
</port>
</input>
<output>
<port id="2">
<dim>2</dim>
<dim>16128</dim>
</port>
</output>
</layer>