Abstract

Action recognition has become a rapidly developing research field within the last decade. But with the increasing demand for large scale data, the need of hand annotated data for the training becomes more and more impractical. One way to avoid frame-based human annotation is the use of action order information to learn the respective action classes. In this context, we propose a hierarchical approach to address the problem of weakly supervised learning of human actions from ordered action labels by structuring recognition in a coarse-to-fine manner. Given a set of videos and an ordered list of the occurring actions, the task is to infer start and end frames of the related action classes within the video and to train the respective action classifiers without any need for hand labeled frame boundaries. We address this problem by combining a framewise RNN model with a coarse probabilistic inference. This combination allows for the temporal alignment of long sequences and thus, for an iterative training of both elements. While this system alone already generates good results, we show that the performance can be further improved by approximating the number of subactions to the characteristics of the different action classes as well as by the introduction of a regularizing length prior. The proposed system is evaluated on two benchmark datasets, the Breakfast and the Hollywood extended dataset, showing a competitive performance on various weak learning tasks such as temporal action segmentation and action alignment.

Highlights

  • A Hybrid RNN-hidden Markov models (HMMs) Approach for Weakly Supervised Temporal Action SegmentationHilde Kuehne*, Alexander Richard*, and Juergen Gall, Member, IEEE arXiv:1906.01028v1 [cs.CV] 3 Jun 2019

  • A CTION recognition has been a vivid and productive field within the last decade

  • We show that the system is able to outperform any other system in this task, but we demonstrate that the proposed length model helps for the case of weakly supervised learning, and in case of semi- and fully supervised action recognition in general

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Summary

A Hybrid RNN-HMM Approach for Weakly Supervised Temporal Action Segmentation

Hilde Kuehne*, Alexander Richard*, and Juergen Gall, Member, IEEE arXiv:1906.01028v1 [cs.CV] 3 Jun 2019. One way to avoid frame-based human annotation is the use of action order information to learn the respective action classes In this context, we propose a hierarchical approach to address the problem of weakly supervised learning of human actions from ordered action labels by structuring recognition in a coarse-to-fine manner. Given a set of videos and an ordered list of the occurring actions, the task is to infer start and end frames of the related action classes within the video and to train the respective action classifiers without any need for hand labeled frame boundaries. We address this problem by combining a framewise RNN model with a coarse probabilistic inference.

INTRODUCTION
RELATED WORK
Weakly supervised learning from structured sequences
Weakly supervised fine-tuning
Weakly supervised approaches in other domains
Length modeling for temporal sequences
Learning from transcripts only
Learning from transcripts including sparse framelevel annotation
SYSTEM OVERVIEW
Hierarchical action model
Fine-grained Subaction Model
Inference
Length prior
Decoding with Length prior
Training
Stop criterion
Datasets
Features
EVALUATION
Evaluation of GRU-based model
Analysis of the subaction modeling
Analysis of length prior
Semi supervised learning including sparse framelevel annotation
Comparison to State-of-the-Art
CONCLUSION
Full Text
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