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2
BINARY_POSITIVE
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Notes
Face Detection
Purpose
This model detects faces and outputs bounding boxes.
Architecture
It uses InceptionV2 architecture Batch Normalization: Accelerating Deep Network Training by Reducing Internal Covariate Shift with FPN Feature Pyramid Networks for Object Detection.
Intended Use
General purpose face detector.
Limitations
False positives with respect to small objects that they are being confused with faces. Heavy occlusion is going to hurt performance, but the model has been trained with partial occlusion.
Other Versions and Major Differences: This model is Inception V2 model with 512 resolution. There are no other versions
The model is trained on openimages_v4_face_only_crowd_filtered.
Training/Test Data and Taxonomy
The model is trained on openimages_v4_face_only_crowd_filtered.
Test data is a combination of internal data and the val split of openimages_v4_all_attr.