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instance-segmentation-security-0033.md

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instance-segmentation-security-0033

Use case and High-level description

This model is an instance segmentation network for 80 classes of objects. It is a Mask-RCNN-like model with ResNeXt152 backbone and Feature Pyramid Networks block for feature maps refinement.

Example

Specification

Metric Value
MS COCO val2017 box AP (max short side 480, max long side 640) 38.9%
MS COCO val2017 mask AP (max short side 480, max long side 640) 34.7%
MS COCO val2017 box AP (max height 480, max width 640) 38.6%
MS COCO val2017 mask AP (max height 480, max width 640) 34.3%
Max objects to detect 100
GFlops 354.274
MParams 143.444
Source framework PyTorch*

Average Precision (AP) is defined and measured according to standard MS COCO evaluation procedure.

Performance

Inputs

  1. name: im_data , shape: [1x3x480x640] - An input image in the format [1xCxHxW]. The expected channel order is BGR.
  2. name: im_info, shape: [1x3] - Image information: processed image height, processed image width and processed image scale w.r.t. the original image resolution.

Outputs

  1. name: classes, shape: [100, ] - Contiguous integer class ID for every detected object, '0' for background, i.e. no object.
  2. name: scores: shape: [100, ] - Detection confidence scores in range [0, 1] for every object.
  3. name: boxes, shape: [100, 4] - Bounding boxes around every detected objects in (top_left_x, top_left_y, bottom_right_x, bottom_right_y) format.
  4. name: raw_masks, shape: [100, 81, 28, 28] - Segmentation heatmaps for all classes for every output bounding box.

Legal Information

[*] Other names and brands may be claimed as the property of others.