Intention-Guided Long-Term Anticipation of Human Actions in Egocentric Videos
Keskeiset käsitteet
By leveraging human intention as a high-level guidance, the proposed framework can effectively anticipate long-term sequences of future human actions in egocentric videos.
Tiivistelmä
The paper proposes a two-module framework for long-term anticipation of human actions in egocentric videos.
The first module, Hierarchical Multitask MLP Mixer (H3M), extracts both low-level action labels and high-level human intention from the observed video sequence. The second module, Intention-Conditioned Variational Autoencoder (I-CVAE), uses the extracted intention and past actions to generate plausible future action sequences.
The key highlights are:
- H3M leverages a hierarchical structure to classify the observed actions and the overall human intention.
- I-CVAE conditions the future action anticipation on the extracted human intention, improving the long-term consistency of the predicted sequences.
- Extensive experiments on the Ego4D dataset demonstrate the effectiveness of the proposed approach, outperforming state-of-the-art baselines.
- Ablation studies provide insights into the different behaviors of verbs and nouns in long-term action anticipation.
Käännä lähde
toiselle kielelle
Luo miellekartta
lähdeaineistosta
Siirry lähteeseen
arxiv.org
Intention-Conditioned Long-Term Human Egocentric Action Forecasting
Tilastot
The Ego4D dataset provides 120 hours of annotated egocentric videos from 53 different scenarios, with 478 noun types and 115 verb types, resulting in a total of 4756 action classes.
Lainaukset
"To anticipate how a person would act in the future, it is essential to understand the human intention since it guides the subject towards a certain action."
"We claim that by leveraging human intention as a high-level guidance, our model is able to anticipate more time-consistent actions in the long-term, thus improving the results over the baseline in Ego4D dataset."
Syvällisempiä Kysymyksiä
How can the proposed framework be extended to handle more complex, multi-agent scenarios in egocentric videos
To extend the proposed framework to handle more complex, multi-agent scenarios in egocentric videos, several modifications and enhancements can be implemented. One approach could involve incorporating a multi-agent tracking system to identify and track multiple agents in the scene. This would require integrating a mechanism to differentiate between actions performed by different agents and predicting their future actions accordingly. Additionally, the framework could be expanded to include a mechanism for agent-agent interaction modeling, where the anticipated actions of one agent are influenced by the actions of other agents in the environment. This would require a more sophisticated understanding of social dynamics and interactions between agents in the scene. Furthermore, the model could be enhanced to handle occlusions and partial visibility of agents, ensuring robust performance in complex scenarios where agents may be partially or fully obstructed from view.
What other high-level contextual information, beyond human intention, could be leveraged to further improve long-term action anticipation
Beyond human intention, there are several other high-level contextual information sources that could be leveraged to further improve long-term action anticipation. Environmental context, such as the location and surroundings in which the actions take place, can provide valuable cues for anticipating future actions. Understanding the spatial layout of the environment and how it influences human behavior can enhance the accuracy of action predictions. Additionally, incorporating temporal context, such as the time of day or the day of the week, can help in predicting recurring patterns or routines in human actions. Social context, including the presence of other individuals or social norms, can also play a significant role in shaping human behavior and can be leveraged to improve anticipation. By integrating these diverse sources of contextual information, the framework can achieve a more comprehensive understanding of the factors influencing human actions and enhance the accuracy of long-term action anticipation.
What are the potential applications of long-term action anticipation in real-world settings, such as human-robot collaboration or assistive technologies
Long-term action anticipation has numerous potential applications in real-world settings, particularly in domains such as human-robot collaboration and assistive technologies. In human-robot collaboration, accurate anticipation of human actions can enable robots to proactively assist and collaborate with humans in various tasks. For example, in a manufacturing setting, a robot equipped with long-term action anticipation capabilities can predict the actions of human workers and provide timely support or coordination to enhance productivity and safety. Similarly, in assistive technologies for individuals with disabilities or elderly populations, long-term action anticipation can be used to predict the needs and actions of users, enabling personalized and proactive assistance. By anticipating future actions, assistive technologies can offer timely support and interventions to enhance the independence and well-being of users. Overall, the applications of long-term action anticipation in real-world settings are diverse and have the potential to revolutionize human-robot interaction and assistive technologies.