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We present neural architectures that disentangle RGB-D images into objects' shapes and styles and a map of the background scene, and explore their applications for few-shot 3D object detection and few-shot concept classification.

mihirp1998/Disentangling-3D-Prototypical-Nets

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Disentangling 3D Prototypical Networks For Few-Shot Concept Learning

Code Release- Ongoing

Installation

conda env create -f environment.yml

Dataset

Download part of the dataset from this link

Update the root_location variable with the parent directory of the downloaded dataset

Training

python main.py cs --en trainer_rgb_no_bn_munit_simple_cross_0.1_dsn

Correspondence

If you want me to prioritize release of something specific, then mail me at mihirp1998.mp@gmail.com

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We present neural architectures that disentangle RGB-D images into objects' shapes and styles and a map of the background scene, and explore their applications for few-shot 3D object detection and few-shot concept classification.

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