We propose a novel architecture for face and emotion recognition and discuss modifications for different types of mobile applications. Emotion recognition task is challenging due to the absence of large-scale datasets and non-uniform labelling. We propose easy-to-implement five class classification approach and suggest modifications for large-scale emotion recognition on three different platforms: desktop, mobile and VPU, and compare the resulting speed and performance. We demonstrate that our results can be compared with the performance of state-of-the-art neural networks and can be implemented on mobile and stand-alone devices
People's emotions are rarely put into words, far more often they are expressed through other cues. T...
Facial expression has made significant progress in recent years with many commercial systems are ava...
In this project, we address the problem to determine human emotion states automatically using modern...
We propose a novel architecture for face and emotion recognition and discuss modifications for diffe...
We propose a novel architecture for face and emotion recognition and discuss modifications for diffe...
In a variety of sectors, automatic facial expression recognition (AFER) has seen increased use in re...
The purpose of this project was to implement a human facial emotion recognition system in a real-tim...
The purpose of this project was to implement a human facial emotion recognition system in a real-tim...
The purpose of this project was to implement a human facial emotion recognition system in a real-tim...
By growing the capacity and processing power of the handheld devices nowadays, a wide range of capab...
In this paper, we provide insights towards achieving more robust automatic facial expression recogni...
This paper presents two novel facial expression recognition techniques: the real-time ensemble for f...
Numerous research works have been put forward over the years to advance the field of facial expressi...
In this paper we implemented an algorithm to detect facial expression in images provided by the came...
People's emotions are rarely put into words, far more often they are expressed through other cues. T...
People's emotions are rarely put into words, far more often they are expressed through other cues. T...
Facial expression has made significant progress in recent years with many commercial systems are ava...
In this project, we address the problem to determine human emotion states automatically using modern...
We propose a novel architecture for face and emotion recognition and discuss modifications for diffe...
We propose a novel architecture for face and emotion recognition and discuss modifications for diffe...
In a variety of sectors, automatic facial expression recognition (AFER) has seen increased use in re...
The purpose of this project was to implement a human facial emotion recognition system in a real-tim...
The purpose of this project was to implement a human facial emotion recognition system in a real-tim...
The purpose of this project was to implement a human facial emotion recognition system in a real-tim...
By growing the capacity and processing power of the handheld devices nowadays, a wide range of capab...
In this paper, we provide insights towards achieving more robust automatic facial expression recogni...
This paper presents two novel facial expression recognition techniques: the real-time ensemble for f...
Numerous research works have been put forward over the years to advance the field of facial expressi...
In this paper we implemented an algorithm to detect facial expression in images provided by the came...
People's emotions are rarely put into words, far more often they are expressed through other cues. T...
People's emotions are rarely put into words, far more often they are expressed through other cues. T...
Facial expression has made significant progress in recent years with many commercial systems are ava...
In this project, we address the problem to determine human emotion states automatically using modern...