scispace - formally typeset
L

Li Fei-Fei

Researcher at Stanford University

Publications -  515
Citations -  199224

Li Fei-Fei is an academic researcher from Stanford University. The author has contributed to research in topics: Computer science & Medicine. The author has an hindex of 120, co-authored 420 publications receiving 145574 citations. Previous affiliations of Li Fei-Fei include Google & California Institute of Technology.

Papers
More filters
Posted Content

Deep Fragment Embeddings for Bidirectional Image Sentence Mapping

TL;DR: This work introduces a model for bidirectional retrieval of images and sentences through a deep, multi-modal embedding of visual and natural language data and introduces a structured max-margin objective that allows this model to explicitly associate fragments across modalities.
Proceedings ArticleDOI

Distributed cosegmentation via submodular optimization on anisotropic diffusion

TL;DR: CoSand is proposed, a distributed cosegmentation approach for a highly variable large-scale image collection that takes advantage of a strong theoretic property in that the temperature under linear anisotropic diffusion is a submodular function; therefore, a greedy algorithm guarantees at least a constant factor approximation to the optimal solution for temperature maximization.
Proceedings ArticleDOI

A Hierarchical Approach for Generating Descriptive Image Paragraphs

TL;DR: A model that decomposes both images and paragraphs into their constituent parts is developed, detecting semantic regions in images and using a hierarchical recurrent neural network to reason about language.
Posted Content

Dense-Captioning Events in Videos

TL;DR: In this article, the authors propose a new model that is able to identify all events in a single pass of the video while simultaneously describing the detected events with natural language, which can capture both short and long events that span minutes.
Proceedings ArticleDOI

Combining randomization and discrimination for fine-grained image categorization

TL;DR: Results show that the proposed random forest with discriminative decision trees algorithm identifies semantically meaningful visual information and outperforms state-of-the-art algorithms on various datasets.