Human capability to anticipate near future from visual observations and non-verbal cues is essential for developing intelligent systems that need to interact with people. Several research areas, such as human-robot interaction (HRI), assisted living or autonomous driving need to foresee future events to avoid crashes or help people. Egocentric scenarios are classic examples where action anticipation is applied due to their numerous applications. Such challenging task demands to capture and model domain's hidden structure to reduce prediction uncertainty. Since multiple actions may equally occur in the future, we treat action anticipation as a multi-label problem with missing labels extending the concept of label smoothing. This idea resembl...
Analysing human actions in videos is gaining a great deal of interest in the field of computer visio...
Human intention is a temporal sequence of human actions to achieve a goal. Determining human intent...
We propose a novel neural memory network based framework for future action sequence forecasting. Thi...
Anticipating actions before they are executed is crucial for a wide range of practical applications,...
To anticipate how a person would act in the future, it is essential to understand the human intentio...
Inspired by human neurological structures for action anticipation, we present an action anticipation...
The task of predicting future actions from a video is crucial for a real-world agent interacting wit...
The goal of human action anticipation is to predict future actions. Ideally, in real-world applicati...
Anticipating future events is an essential feature for intelligent systems and embodied AI. However,...
We introduce a Deep Stochastic IOC1 RNN Encoderdecoder framework, DESIRE, for the task of future pre...
Anticipatory and predictive models are becoming very important features of robot systems. This thesi...
We introduce a Deep Stochastic IOC1 RNN Encoderdecoder framework, DESIRE, for the task of future pre...
Abstract—An important aspect of human perception is anticipation, which we use extensively in our da...
Event understanding is one of the most fundamental problems in artificial intelligence and computer ...
In this report, we describe the technical details of our approach for the Ego4D Long-Term Action Ant...
Analysing human actions in videos is gaining a great deal of interest in the field of computer visio...
Human intention is a temporal sequence of human actions to achieve a goal. Determining human intent...
We propose a novel neural memory network based framework for future action sequence forecasting. Thi...
Anticipating actions before they are executed is crucial for a wide range of practical applications,...
To anticipate how a person would act in the future, it is essential to understand the human intentio...
Inspired by human neurological structures for action anticipation, we present an action anticipation...
The task of predicting future actions from a video is crucial for a real-world agent interacting wit...
The goal of human action anticipation is to predict future actions. Ideally, in real-world applicati...
Anticipating future events is an essential feature for intelligent systems and embodied AI. However,...
We introduce a Deep Stochastic IOC1 RNN Encoderdecoder framework, DESIRE, for the task of future pre...
Anticipatory and predictive models are becoming very important features of robot systems. This thesi...
We introduce a Deep Stochastic IOC1 RNN Encoderdecoder framework, DESIRE, for the task of future pre...
Abstract—An important aspect of human perception is anticipation, which we use extensively in our da...
Event understanding is one of the most fundamental problems in artificial intelligence and computer ...
In this report, we describe the technical details of our approach for the Ego4D Long-Term Action Ant...
Analysing human actions in videos is gaining a great deal of interest in the field of computer visio...
Human intention is a temporal sequence of human actions to achieve a goal. Determining human intent...
We propose a novel neural memory network based framework for future action sequence forecasting. Thi...