| `int` | `background_label_id` | The label ID for the background class. If there is no background class, set it to `-1`. |
| `int` | `num_classes` | The number of classes. |
| `int` | `topK` | The number of bounding boxes to be fed into the NMS step. |
| `int` | `keepTopK` | The number of total bounding boxes to be kept per-image after the NMS step. Should be less than or equal to the `topK` value. |
| `float` | `scoreThreshold` | The scalar threshold for score (low scoring boxes are removed). |
| `float` | `iouThreshold` | The scalar threshold for IoU (new boxes that have high IoU overlap with previously selected boxes are removed). |
| `int` | `isNormalized` | Set to `false` if the box coordinates are not normalized, meaning they are not in the range `[0,1]`. Defaults to `true`. |
| `int` | `clipBoxes` | Forcibly restrict bounding boxes to the normalized range `[0,1]`. Only applicable if `isNormalized` is also `true`. Defaults to `true`. |
#### Inputs
<dl>
<dt><tt>inputs[0]</tt>: T</dt>
<dd>boxes; 4-D tensor of shape (N, num_boxes, num_classes, 4), where N is the batch size; `num_boxes` is the number of boxes; `num_classes` is the number of classes, which could be 1 if the boxes are shared between all classes.</dd>
<dt><tt>inputs[1]</tt>: T</dt>
<dd>scores; 4-D tensor of shape (N, num_boxes, 1, num_classes). </dd>
<dd>dets; 3-D tensor of shape (N, valid_num_boxes, 5), `valid_num_boxes` is the number of boxes after NMS. For each row `dets[i,j,:] = [x0, y0, x1, y1, score]`</dd>
| `int` | `align_corners` | If `align_corners=1`, the extrema (`-1` and `1`) are considered as referring to the center points of the input's corner pixels. If `align_corners=0`, they are instead considered as referring to the corner points of the input's corner pixels, making the sampling more resolution agnostic. |
#### Inputs
<dl>
<dt><tt>inputs[0]</tt>: T</dt>
<dd>Input feature; 4-D tensor of shape (N, C, inH, inW), where N is the batch size, C is the numbers of channels, inH and inW are the height and width of the data.</dd>
<dt><tt>inputs[1]</tt>: T</dt>
<dd>Input offset; 4-D tensor of shape (N, outH, outW, 2), where outH and outW are the height and width of offset and output. </dd>
</dl>
#### Outputs
<dl>
<dt><tt>outputs[0]</tt>: T</dt>
<dd>Output feature; 4-D tensor of shape (N, C, outH, outW).</dd>
</dl>
#### Type Constraints
- T:tensor(float32, Linear)
### MMCVInstanceNormalization
#### Description
Carry out instance normalization as described in the paper https://arxiv.org/abs/1607.08022.
y = scale * (x - mean) / sqrt(variance + epsilon) + B, where mean and variance are computed per instance per channel.
| `float` | `epsilon` | The epsilon value to use to avoid division by zero. Default is 1e-05 |
#### Inputs
<dl>
<dt><tt>input</tt>: T</dt>
<dd>Input data tensor from the previous operator; dimensions for image case are (N x C x H x W), where N is the batch size, C is the number of channels, and H and W are the height and the width of the data. For non image case, the dimensions are in the form of (N x C x D1 x D2 ... Dn), where N is the batch size.</dd>
<dt><tt>scale</tt>: T</dt>
<dd>The input 1-dimensional scale tensor of size C.</dd>
<dt><tt>B</tt>: T</dt>
<dd>The input 1-dimensional bias tensor of size C.</dd>
</dl>
#### Outputs
<dl>
<dt><tt>output</tt>: T</dt>
<dd>The output tensor of the same shape as input.</dd>
</dl>
#### Type Constraints
- T:tensor(float32, Linear)
### MMCVModulatedDeformConv2d
#### Description
Perform Modulated Deformable Convolution on input feature. Read [Deformable ConvNets v2: More Deformable, Better Results](https://arxiv.org/abs/1811.11168?from=timeline) for detail.
| `list of ints` | `stride` | The stride of the convolving kernel. (sH, sW) |
| `list of ints` | `padding` | Paddings on both sides of the input. (padH, padW) |
| `list of ints` | `dilation` | The spacing between kernel elements. (dH, dW) |
| `int` | `deformable_group` | Groups of deformable offset. |
| `int` | `group` | Split input into groups. `input_channel` should be divisible by the number of groups. |
#### Inputs
<dl>
<dt><tt>inputs[0]</tt>: T</dt>
<dd>Input feature; 4-D tensor of shape (N, C, inH, inW), where N is the batch size, C is the number of channels, inH and inW are the height and width of the data.</dd>
<dt><tt>inputs[1]</tt>: T</dt>
<dd>Input offset; 4-D tensor of shape (N, deformable_group* 2* kH* kW, outH, outW), where kH and kW are the height and width of weight, outH and outW are the height and width of offset and output.</dd>
<dt><tt>inputs[2]</tt>: T</dt>
<dd>Input mask; 4-D tensor of shape (N, deformable_group* kH* kW, outH, outW), where kH and kW are the height and width of weight, outH and outW are the height and width of offset and output.</dd>
<dt><tt>inputs[3]</tt>: T</dt>
<dd>Input weight; 4-D tensor of shape (output_channel, input_channel, kH, kW).</dd>
<dt><tt>inputs[4]</tt>: T, optional</dt>
<dd>Input weight; 1-D tensor of shape (output_channel).</dd>
</dl>
#### Outputs
<dl>
<dt><tt>outputs[0]</tt>: T</dt>
<dd>Output feature; 4-D tensor of shape (N, output_channel, outH, outW).</dd>
</dl>
#### Type Constraints
- T:tensor(float32, Linear)
### MMCVMultiLevelRoiAlign
#### Description
Perform RoIAlign on features from multiple levels. Used in bbox_head of most two-stage detectors.
| `int` | `output_height` | height of output roi. |
| `int` | `output_width` | width of output roi. |
| `list of floats` | `featmap_strides` | feature map stride of each level. |
| `int` | `sampling_ratio` | number of input samples to take for each output sample. `0` means to take samples densely for current models. |
| `float` | `roi_scale_factor` | RoIs will be scaled by this factor before RoI Align. |
| `int` | `finest_scale` | Scale threshold of mapping to level 0. Default: 56. |
| `int` | `aligned` | If `aligned=0`, use the legacy implementation in MMDetection. Else, align the results more perfectly. |
#### Inputs
<dt><tt>inputs[0]</tt>: T</dt>
<dd>RoIs (Regions of Interest) to pool over; 2-D tensor of shape (num_rois, 5) given as [[batch_index, x1, y1, x2, y2], ...].</dd>
<dt><tt>inputs[1~]</tt>: T</dt>
<dd>Input feature map; 4D tensor of shape (N, C, H, W), where N is the batch size, C is the numbers of channels, H and W are the height and width of the data.</dd>
#### Outputs
<dl>
<dt><tt>outputs[0]</tt>: T</dt>
<dd>RoI pooled output, 4-D tensor of shape (num_rois, C, output_height, output_width). The r-th batch element output[0][r-1] is a pooled feature map corresponding to the r-th RoI inputs[1][r-1].<dd>
</dl>
#### Type Constraints
- T:tensor(float32, Linear)
### MMCVRoIAlign
#### Description
Perform RoIAlign on output feature, used in bbox_head of most two-stage detectors.
| `int` | `output_height` | height of output roi |
| `int` | `output_width` | width of output roi |
| `float` | `spatial_scale` | used to scale the input boxes |
| `int` | `sampling_ratio` | number of input samples to take for each output sample. `0` means to take samples densely for current models. |
| `str` | `mode` | pooling mode in each bin. `avg` or `max` |
| `int` | `aligned` | If `aligned=0`, use the legacy implementation in MMDetection. Else, align the results more perfectly. |
#### Inputs
<dl>
<dt><tt>inputs[0]</tt>: T</dt>
<dd>Input feature map; 4D tensor of shape (N, C, H, W), where N is the batch size, C is the numbers of channels, H and W are the height and width of the data.</dd>
<dt><tt>inputs[1]</tt>: T</dt>
<dd>RoIs (Regions of Interest) to pool over; 2-D tensor of shape (num_rois, 5) given as [[batch_index, x1, y1, x2, y2], ...]. The RoIs' coordinates are the coordinate system of inputs[0].</dd>
</dl>
#### Outputs
<dl>
<dt><tt>outputs[0]</tt>: T</dt>
<dd>RoI pooled output, 4-D tensor of shape (num_rois, C, output_height, output_width). The r-th batch element output[0][r-1] is a pooled feature map corresponding to the r-th RoI inputs[1][r-1].<dd>
ScatterND takes three inputs `data` tensor of rank r >= 1, `indices` tensor of rank q >= 1, and `updates` tensor of rank q + r - indices.shape\[-1\] - 1. The output of the operation is produced by creating a copy of the input `data`, and then updating its value to values specified by updates at specific index positions specified by `indices`. Its output shape is the same as the shape of `data`. Note that `indices` should not have duplicate entries. That is, two or more updates for the same index-location is not supported.
| `int` | `background_label_id` | The label ID for the background class. If there is no background class, set it to `-1`. |
| `int` | `num_classes` | The number of classes. |
| `int` | `topK` | The number of bounding boxes to be fed into the NMS step. |
| `int` | `keepTopK` | The number of total bounding boxes to be kept per-image after the NMS step. Should be less than or equal to the `topK` value. |
| `float` | `scoreThreshold` | The scalar threshold for score (low scoring boxes are removed). |
| `float` | `iouThreshold` | The scalar threshold for IoU (new boxes that have high IoU overlap with previously selected boxes are removed). |
| `int` | `isNormalized` | Set to `false` if the box coordinates are not normalized, meaning they are not in the range `[0,1]`. Defaults to `true`. |
| `int` | `clipBoxes` | Forcibly restrict bounding boxes to the normalized range `[0,1]`. Only applicable if `isNormalized` is also `true`. Defaults to `true`. |
#### Inputs
<dl>
<dt><tt>inputs[0]</tt>: T</dt>
<dd>boxes; 4-D tensor of shape (N, num_boxes, num_classes, 5), where N is the batch size; `num_boxes` is the number of boxes; `num_classes` is the number of classes, which could be 1 if the boxes are shared between all classes.</dd>
<dt><tt>inputs[1]</tt>: T</dt>
<dd>scores; 4-D tensor of shape (N, num_boxes, 1, num_classes). </dd>
<dd>dets; 3-D tensor of shape (N, valid_num_boxes, 6), `valid_num_boxes` is the number of boxes after NMS. For each row `dets[i,j,:] = [x0, y0, width, height, theta, score]`</dd>
Dot product attention used to support multihead attention, read [Attention Is All You Need](https://arxiv.org/abs/1706.03762?context=cs) for more detail.
#### Parameters
None
#### Inputs
<dl>
<dt><tt>inputs[0]</tt>: T</dt>
<dd>query; 3-D tensor with shape [batch_size, sequence_length, embedding_size].</dd>
<dt><tt>inputs[1]</tt>: T</dt>
<dd>key; 3-D tensor with shape [batch_size, sequence_length, embedding_size].</dd>
<dt><tt>inputs[2]</tt>: T</dt>
<dd>value; 3-D tensor with shape [batch_size, sequence_length, embedding_size].</dd>
<dt><tt>inputs[3]</tt>: T</dt>
<dd>mask; 2-D/3-D tensor with shape [sequence_length, sequence_length] or [batch_size, sequence_length, sequence_length]. optional.</dd>
</dl>
#### Outputs
<dl>
<dt><tt>outputs[0]</tt>: T</dt>
<dd>3-D tensor of shape [batch_size, sequence_length, embedding_size]. `softmax(q@k.T)@v`</dd>
<dt><tt>outputs[1]</tt>: T</dt>
<dd>3-D tensor of shape [batch_size, sequence_length, sequence_length]. `softmax(q@k.T)`</dd>