PSConv
Poly-Scale Layer
A deep learning framework module implementing a compact multi-scale convolutional layer for feature extraction in object detection models.
[ECCV 2020] PSConv: Squeezing Feature Pyramid into One Compact Poly-Scale Convolutional Layer
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Language: Python
last commit: over 4 years ago
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convolutioneccv2020feature-pyramidsinstance-segmentationmmdetectionmulti-scaleobject-detectionpytorch
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