Search Results for author: Gautam Singh

Found 18 papers, 6 papers with code

Learning Attentive Meta-Transfer

no code implementations ICML 2020 Jaesik Yoon, Gautam Singh, Sungjin Ahn

Meta-transfer learning seeks to improve the efficiency of learning a new task via both meta-learning and transfer-learning in a setting with a stream of evolving tasks.

Meta-Learning Transfer Learning

Parallelized Spatiotemporal Binding

no code implementations26 Feb 2024 Gautam Singh, Yue Wang, Jiawei Yang, Boris Ivanovic, Sungjin Ahn, Marco Pavone, Tong Che

While modern best practices advocate for scalable architectures that support long-range interactions, object-centric models are yet to fully embrace these architectures.

Object

Object-Centric Slot Diffusion

1 code implementation NeurIPS 2023 Jindong Jiang, Fei Deng, Gautam Singh, Sungjin Ahn

The recent success of transformer-based image generative models in object-centric learning highlights the importance of powerful image generators for handling complex scenes.

Image Generation Image Segmentation +2

Neural Systematic Binder

no code implementations2 Nov 2022 Gautam Singh, Yeongbin Kim, Sungjin Ahn

While token-like structured knowledge representations are naturally provided in text, it is elusive how to obtain them for unstructured modalities such as scene images.

Disentanglement Object +2

Simple Unsupervised Object-Centric Learning for Complex and Naturalistic Videos

1 code implementation27 May 2022 Gautam Singh, Yi-Fu Wu, Sungjin Ahn

Unsupervised object-centric learning aims to represent the modular, compositional, and causal structure of a scene as a set of object representations and thereby promises to resolve many critical limitations of traditional single-vector representations such as poor systematic generalization.

Object Systematic Generalization

Illiterate DALL-E Learns to Compose

1 code implementation17 Oct 2021 Gautam Singh, Fei Deng, Sungjin Ahn

In this paper, we propose a simple but novel slot-based autoencoding architecture, called SLATE, for combining the best of both worlds: learning object-centric representations that allows systematic generalization in zero-shot image generation without text.

Image Generation Object +1

Illiterate DALL$\cdot$E Learns to Compose

no code implementations ICLR 2022 Gautam Singh, Fei Deng, Sungjin Ahn

In experiments, we show that this simple architecture achieves zero-shot generation of novel images without text and better quality in generation than the models based on mixture decoders.

Image Generation Systematic Generalization

Structured World Belief for Reinforcement Learning in POMDP

no code implementations19 Jul 2021 Gautam Singh, Skand Peri, Junghyun Kim, Hyunseok Kim, Sungjin Ahn

In this paper, we propose Structured World Belief, a model for learning and inference of object-centric belief states.

Inductive Bias Object +3

Robustifying Sequential Neural Processes

no code implementations29 Jun 2020 Jaesik Yoon, Gautam Singh, Sungjin Ahn

When tasks change over time, meta-transfer learning seeks to improve the efficiency of learning a new task via both meta-learning and transfer-learning.

Meta-Learning Transfer Learning

Fair Transfer of Multiple Style Attributes in Text

no code implementations18 Jan 2020 Karan Dabas, Nishtha Madan, Vijay Arya, Sameep Mehta, Gautam Singh, Tanmoy Chakraborty

To preserve anonymity and obfuscate their identity on online platforms users may morph their text and portray themselves as a different gender or demographic.

Chatbot MORPH +1

SPACE: Unsupervised Object-Oriented Scene Representation via Spatial Attention and Decomposition

4 code implementations ICLR 2020 Zhixuan Lin, Yi-Fu Wu, Skand Vishwanath Peri, Weihao Sun, Gautam Singh, Fei Deng, Jindong Jiang, Sungjin Ahn

Previous approaches for unsupervised object-oriented scene representation learning are either based on spatial-attention or scene-mixture approaches and limited in scalability which is a main obstacle towards modeling real-world scenes.

Object Representation Learning

Attentive Sequential Neural Processes

no code implementations25 Sep 2019 Jaesik Yoon, Gautam Singh, Sungjin Ahn

In this paper, we propose the Attentive Sequential Neural Processes (ASNP) that resolve the underfitting in SNP by introducing a novel imaginary context as a latent variable and by applying attention over the imaginary context.

regression

Sequential Neural Processes

1 code implementation NeurIPS 2019 Gautam Singh, Jaesik Yoon, Youngsung Son, Sungjin Ahn

In this paper, we propose Sequential Neural Processes (SNP) which incorporates a temporal state-transition model of stochastic processes and thus extends its modeling capabilities to dynamic stochastic processes.

Gaussian Processes

Mining Procedures from Technical Support Documents

no code implementations24 May 2018 Abhirut Gupta, Abhay Khosla, Gautam Singh, Gargi Dasgupta

Existing research on question answering or intelligent chatbots does not look within procedures or deep-understand them.

Question Answering

Generating Clues for Gender based Occupation De-biasing in Text

1 code implementation11 Apr 2018 Nishtha Madaan, Gautam Singh, Sameep Mehta, Aditya Chetan, Brihi Joshi

Vast availability of text data has enabled widespread training and use of AI systems that not only learn and predict attributes from the text but also generate text automatically.

Cross-Lingual Predicate Mapping Between Linked Data Ontologies

no code implementations6 Dec 2016 Gautam Singh, Saemi Jang, Mun Y. Yi

In this paper, we propose and demonstrate an ad-hoc system to find possible owl:equivalentProperty links between predicates in ontologies of different natural languages.

Semantic Similarity Semantic Textual Similarity

Nonparametric Scene Parsing with Adaptive Feature Relevance and Semantic Context

no code implementations CVPR 2013 Gautam Singh, Jana Kosecka

This paper presents a nonparametric approach to semantic parsing using small patches and simple gradient, color and location features.

Retrieval Scene Parsing +1

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