A U-Net combined with a variational auto-encoder that is able to learn conditional distributions over semantic segmentations.
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Updated
Mar 24, 2023 - Jupyter Notebook
A U-Net combined with a variational auto-encoder that is able to learn conditional distributions over semantic segmentations.
Generative Probabilistic Novelty Detection with Adversarial Autoencoders
AutoGBT is used for AutoML in a lifelong machine learning setting to classify large volume high cardinality data streams under concept-drift. AutoGBT was developed by a joint team ('autodidact.ai') from Flytxt, Indian Institute of Technology Delhi and CSIR-CEERI as a part of NIPS 2018 AutoML for Lifelong Machine Learning Challenge.
Weakly Supervised Dense Event Captioning in Videos, i.e. generating multiple sentence descriptions for a video in a weakly-supervised manner.
An official PyTorch implementation of the paper "Text-Adaptive Generative Adversarial Networks: Manipulating Images with Natural Language", NeurIPS 2018
Keras implementation of "Image Inpainting via Generative Multi-column Convolutional Neural Networks" paper published at NIPS 2018
Implementation for <Learning towards Minimum Hyperspherical Energy> in NIPS'18.
Open-set Recognition with Adversarial Autoencoders
Gold Loss Correction for training neural networks with labels corrupted with severe noise
Harvard Fall 2019 Applied Math 207 A Primer and Critique of Prior Networks
A re-implementation of the Pommerman environment in C++
Code, documents, and deployment configuration files, related to our participation in the 2018 NIPS Adversarial Vision Challenge "Robust Model Track"
A LaTex template for reports, based on the elegant NIPS 2018 style.
The code for DirBN in NeurIPS 2018
Tensorflow implementation of paper ‘Autowarp: Learning a Warping Distance from Unlabeled Time Series Using Sequence Autoencoder’ (NIPS18)
AI for Prosthetics NIPS 2018 Challenge. Repo created from helper: https://github.com/seungjaeryanlee/osim-rl-helper
Our submission for the NeurIPs 2018: Adversarial Vision Challenge (Targeted Attack Track). Top-10 submission
Using LDA, we analyze a large collection of NIPS research papers from the past 3 decades, o discover the latest trends in machine learning.
The docker image of the NIPS 2018 challenge (no visualisations for now)
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