Statistical Analysis of Human Emotions to Suggest Suitable Music as per Individual's Mood

Author(s):  
Rohit Rastogi ◽  
Prabhat Yadav ◽  
Jayash Raj Singh Yadav

There is music recommendation software and music providers that are well explored and commonly used, but those are generally based on simple similarity calculations and manually tagged parameters. This project proposes a music recommendation system based on emotion detection of users, automatic computing, and classification. Music is recommended based on the emotion expressed and temper of the user. Like artists and genre, emotion of the user can also be a crucial recommendation point for music listeners. The different mооds in whiсh the system will сlаssify the imаges аre hаррy, neutrаl, аnd sаd. The system will рre-sоrt the songs according to their genre in the above-mentioned categories. This research project gives us advancement in the music industry with the help of machine learning and artificial intelligence and will reduce the hassle of selecting songs in our leisure time and will automatically play songs by detecting the emotion of the user. This data can be used to play the songs that match the current mood detected from the provided input by the user.

Author(s):  
ShanthaShalini. K, Et. al.

The face is an important aspect in predicting human emotions and mood. Usually the human emotions are extracted with the use of camera. There are many applications getting developed based on detection of human emotions. Few applications of emotion detection are business notification recommendation, e-learning, mental disorder and depression detection, criminal behaviour detection etc. In this proposed system, we develop a prototype in recommendation of dynamic music recommendation system based on human emotions. Based on each human listening pattern, the songs for each emotions are trained. Integration of feature extraction and machine learning techniques, from the real face the emotion are detected and once the mood is derived from the input image, respective songs for the specific mood would be played to hold the users. In this approach, the application gets connected with human feelings thus giving a personal touch to the users. Therefore our projected system concentrate on identifying the human feelings for developing emotion based music player using computer vision and machine learning techniques. For experimental results, we use openCV for emotion detection and music recommendation.


Author(s):  
Kartik Kaushik

Music рlаys аn imроrtаnt rоle in humаn lifestyles. Humans рrefers tо hear tо musiс/songs mоre оften thаn аbig apple оther pursuit. With internet teсhnоlоgies, large quantity оf musiс соntent hold musiс оf several genres hаs beсоme’s eаsily аccessible tо milliоns оf user аrоund whole wоrld. Musiс group sinсe deсаde аnd соmрgrowing оf many genres оf musiс is accessible. The mаjоr diffiсulties thаt customer fасe is tо choose аррrорriаte song/musiс frоm suсh big collection of music. The objective оf our рrоjeсt wаs tо reсоmmend sоngs tо customers built exclusively оn their listening habits, with nо knowledge аbоut the musiс. Musiс аррliсаtiоns аre аttemрting tо imрrоve their reсоmmendаtiоn structures in оrder tо оffer their customers the quality роssible listening exрerienсe аnd keeр them оn their рlаtfоrm. For better reсоmmendаtiоns, view аnаlysis will be рerfоrm оn the lyriсs оf sоng and the use of rаndоm-fоrest аlgоrithm will be use fоr сlаssified the song lines intо vаriоus саtegоry (hаррy, sаd).


Author(s):  
Varsha Verma ◽  
Ninad Marathe ◽  
Parth Sanghavi ◽  
Dr. Prashant Nitnaware

In our project, we will be using a sample data set of songs to find correlations between users and songs so that a new song will be recommended to them based on their previous history. We will implement this project using libraries like NumPy, Pandas.We will also be using Cosine similarity along with CountVectorizer. Along with this,a front end with flask that will show us the recommended songs when a specific song is processed.


2021 ◽  
Vol 1071 (1) ◽  
pp. 012021
Author(s):  
Abba Suganda Girsang ◽  
Antoni Wibowo ◽  
Jason ◽  
Roslynlia

2020 ◽  
Vol 8 (4) ◽  
pp. 367
Author(s):  
Muhammad Arief Budiman ◽  
Gst. Ayu Vida Mastrika Giri

The development of the music industry is currently growing rapidly, millions of music works continue to be issued by various music artists. As for the technologies also follows these developments, examples are mobile phones applications that have music subscription services, namely Spotify, Joox, GrooveShark, and others. Application-based services are increasingly in demand by users for streaming music, free or paid. In this paper, a music recommendation system is proposed, which the system itself can recommend songs based on the similarity of the artist that the user likes or has heard. This research uses Collaborative Filtering method with Cosine Similarity and K-Nearest Neighbor algorithm. From this research, a system that can recommend songs based on artists who are related to one another is generated.


Intexto ◽  
2019 ◽  
pp. 166-184
Author(s):  
João Damasceno Martins Ladeira

This article discusses the Netflix recommendation system, expecting to understand these techniques as a part of the contemporary strategies for the reorganization of television and audiovisual. It renders problematic a technology indispensable to these suggestions: the tools for artificial intelligence, expecting to infer questions of cultural impact inscribed in this technique. These recommendations will be analyzed in their relationship with the formerly decisive form for the constitution of broadcast: the television flow. The text investigates the meaning such influential tools at the definition of a television based on the manipulation of collections, and not in the predetermined programming, decided previously to the transmission of content. The conclusion explores the consequences of these archives, which concedes to the user a sensation of choice in tension with the mechanical character of those images.


Sign in / Sign up

Export Citation Format

Share Document