scholarly journals Music Recommendation Based on Face Emotion Recognition

Author(s):  
Madhuri Athavle ◽  

We propose a new approach for playing music automatically using facial emotion. Most of the existing approaches involve playing music manually, using wearable computing devices, or classifying based on audio features. Instead, we propose to change the manual sorting and playing. We have used a Convolutional Neural Network for emotion detection. For music recommendations, Pygame & Tkinter are used. Our proposed system tends to reduce the computational time involved in obtaining the results and the overall cost of the designed system, thereby increasing the system’s overall accuracy. Testing of the system is done on the FER2013 dataset. Facial expressions are captured using an inbuilt camera. Feature extraction is performed on input face images to detect emotions such as happy, angry, sad, surprise, and neutral. Automatically music playlist is generated by identifying the current emotion of the user. It yields better performance in terms of computational time, as compared to the algorithm in the existing literature.

2021 ◽  
Vol 35 (1) ◽  
pp. 55-61
Author(s):  
Praveen Kulkarni ◽  
Rajesh T M

Facial expression recognition assumes a significant function in imparting the feelings and expectations of people. Recognizing facial emotions in an uncontrolled climate is more problematic than in a controlled climate due to progress in hindrance, glare and clamor. This paper, we demonstrate another system for successful facial emotion recognition from ongoing face images. Dissimilar to different strategies which invest a lot of energy by partitioning the picture into squares or entire face pictures; our strategy extricates the discriminative component from notable face areas and afterward consolidates with surface and direction highlights for better portrayal. We also made sub-categories in the main expressions like happy and sad, to identify the level of happiness and sadness and to check whether the person is really happy/sad or acting to be happy/sad. Moreover, we lessen the information measurement by choosing the profoundly discriminative highlights. The proposed system is fit for giving high matching precision rate even within the sight of impediments, light, and commotion. To show the heartiness of the expected structure, it utilized two freely accessible testing dataset. These trial results show that the presentation of the expected structure is superior to current strategies, which demonstrate the impressive capability of consolidating mathematical highlights with appearance-based highlights.


Author(s):  
Moutan Mukhopadhyay ◽  
Saurabh Pal ◽  
Anand Nayyar ◽  
Pijush Kanti Dutta Pramanik ◽  
Niloy Dasgupta ◽  
...  

Facial emotion analysis is the basic idea to train the system to understand the different facial expressions of human beings. The Facial expressions are recorded by the use of camera which is attached to user device. Additionally this project will be helpful for the online marketing of the products as it can detect the facial expressions and sentiment of the person. It is the study of people sentiment, opinions and emotions. Sentiment analysis is the method by which information is taken from the facial expressions of people in regard to different situations. The main aim is to read the facial expressions of the human beings using a good resolution camera so that the machine can identify the human sentiments. Convolutional neural network is used as an existing system which is unsupervised neural network to replace that with a supervised mechanism which is called supervised neural network. It can be used in gaming sector, unlock smart phones, automated facial language translation etc.


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