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Daniel Rotman

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2 papers
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2

AAAI Conference 2021 Conference Paper

Noise Estimation Using Density Estimation for Self-Supervised Multimodal Learning

  • Elad Amrani
  • Rami Ben-Ari
  • Daniel Rotman
  • Alex Bronstein

One of the key factors of enabling machine learning models to comprehend and solve real-world tasks is to leverage multimodal data. Unfortunately, annotation of multimodal data is challenging and expensive. Recently, self-supervised multimodal methods that combine vision and language were proposed to learn multimodal representations without annotation. However, these methods often choose to ignore the presence of high levels of noise and thus yield sub-optimal results. In this work, we show that the problem of noise estimation for multimodal data can be reduced to a multimodal density estimation task. Using multimodal density estimation, we propose a noise estimation building block for multimodal representation learning that is based strictly on the inherent correlation between different modalities. We demonstrate how our noise estimation can be broadly integrated and achieves comparable results to state-of-the-art performance on five different benchmark datasets for two challenging multimodal tasks: Video Question Answering and Text-To-Video Retrieval. Furthermore, we provide a theoretical probabilistic error bound substantiating our empirical results and analyze failure cases. Code: https: //github. com/elad-amrani/ssml.

AAAI Conference 2019 System Paper

Temporal Video Analyzer (TVAN): Efficient Temporal Video Analysis for Robust Video Description and Search

  • Daniel Rotman
  • Dror Porat
  • Yevgeny Burshtein
  • Udi Barzelay

With the increasing popularity of video content, automatic video understanding is becoming more and more important for streamlining video content consumption and reuse. In this work, we present TVAN—temporal video analyzer—a system for temporal video analysis aimed at enabling efficient and robust video description and search. Its main components include: temporal video segmentation, compact scene representation for efficient visual recognition, and concise scene description generation. We provide a technical overview of the system, as well as demonstrate its usefulness for the task of video search and navigation.