Emotion Manipulation Through Music -- A Deep Learning Interactive Visual Approach
- URL: http://arxiv.org/abs/2406.08623v1
- Date: Wed, 12 Jun 2024 20:12:29 GMT
- Title: Emotion Manipulation Through Music -- A Deep Learning Interactive Visual Approach
- Authors: Adel N. Abdalla, Jared Osborne, Razvan Andonie,
- Abstract summary: We introduce a novel way to manipulate the emotional content of a song using AI tools.
Our goal is to achieve the desired emotion while leaving the original melody as intact as possible.
This research may contribute to on-demand custom music generation, the automated remixing of existing work, and music playlists tuned for emotional progression.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Music evokes emotion in many people. We introduce a novel way to manipulate the emotional content of a song using AI tools. Our goal is to achieve the desired emotion while leaving the original melody as intact as possible. For this, we create an interactive pipeline capable of shifting an input song into a diametrically opposed emotion and visualize this result through Russel's Circumplex model. Our approach is a proof-of-concept for Semantic Manipulation of Music, a novel field aimed at modifying the emotional content of existing music. We design a deep learning model able to assess the accuracy of our modifications to key, SoundFont instrumentation, and other musical features. The accuracy of our model is in-line with the current state of the art techniques on the 4Q Emotion dataset. With further refinement, this research may contribute to on-demand custom music generation, the automated remixing of existing work, and music playlists tuned for emotional progression.
Related papers
- Audio-Driven Emotional 3D Talking-Head Generation [47.6666060652434]
We present a novel system for synthesizing high-fidelity, audio-driven video portraits with accurate emotional expressions.
We propose a pose sampling method that generates natural idle-state (non-speaking) videos in response to silent audio inputs.
arXiv Detail & Related papers (2024-10-07T08:23:05Z) - A Survey of Foundation Models for Music Understanding [60.83532699497597]
This work is one of the early reviews of the intersection of AI techniques and music understanding.
We investigated, analyzed, and tested recent large-scale music foundation models in respect of their music comprehension abilities.
arXiv Detail & Related papers (2024-09-15T03:34:14Z) - Bridging Paintings and Music -- Exploring Emotion based Music Generation through Paintings [10.302353984541497]
This research develops a model capable of generating music that resonates with the emotions depicted in visual arts.
Addressing the scarcity of aligned art and music data, we curated the Emotion Painting Music dataset.
Our dual-stage framework converts images to text descriptions of emotional content and then transforms these descriptions into music, facilitating efficient learning with minimal data.
arXiv Detail & Related papers (2024-09-12T08:19:25Z) - MeLFusion: Synthesizing Music from Image and Language Cues using Diffusion Models [57.47799823804519]
We are inspired by how musicians compose music not just from a movie script, but also through visualizations.
We propose MeLFusion, a model that can effectively use cues from a textual description and the corresponding image to synthesize music.
Our exhaustive experimental evaluation suggests that adding visual information to the music synthesis pipeline significantly improves the quality of generated music.
arXiv Detail & Related papers (2024-06-07T06:38:59Z) - Attention-based Interactive Disentangling Network for Instance-level
Emotional Voice Conversion [81.1492897350032]
Emotional Voice Conversion aims to manipulate a speech according to a given emotion while preserving non-emotion components.
We propose an Attention-based Interactive diseNtangling Network (AINN) that leverages instance-wise emotional knowledge for voice conversion.
arXiv Detail & Related papers (2023-12-29T08:06:45Z) - Are Words Enough? On the semantic conditioning of affective music
generation [1.534667887016089]
This scoping review aims to analyze and discuss the possibilities of music generation conditioned by emotions.
In detail, we review two main paradigms adopted in automatic music generation: rules-based and machine-learning models.
We conclude that overcoming the limitation and ambiguity of language to express emotions through music has the potential to impact the creative industries.
arXiv Detail & Related papers (2023-11-07T00:19:09Z) - REMAST: Real-time Emotion-based Music Arrangement with Soft Transition [29.34094293561448]
Music as an emotional intervention medium has important applications in scenarios such as music therapy, games, and movies.
We propose REMAST to achieve emotion real-time fit and smooth transition simultaneously.
According to the evaluation results, REMAST surpasses the state-of-the-art methods in objective and subjective metrics.
arXiv Detail & Related papers (2023-05-14T00:09:48Z) - A Novel Multi-Task Learning Method for Symbolic Music Emotion
Recognition [76.65908232134203]
Symbolic Music Emotion Recognition(SMER) is to predict music emotion from symbolic data, such as MIDI and MusicXML.
In this paper, we present a simple multi-task framework for SMER, which incorporates the emotion recognition task with other emotion-related auxiliary tasks.
arXiv Detail & Related papers (2022-01-15T07:45:10Z) - Musical Prosody-Driven Emotion Classification: Interpreting Vocalists
Portrayal of Emotions Through Machine Learning [0.0]
The role of musical prosody remains under-explored despite several studies demonstrating a strong connection between prosody and emotion.
In this study, we restrict the input of traditional machine learning algorithms to the features of musical prosody.
We utilize a methodology for individual data collection from vocalists, and personal ground truth labeling by the artist themselves.
arXiv Detail & Related papers (2021-06-04T15:40:19Z) - Enhancing Cognitive Models of Emotions with Representation Learning [58.2386408470585]
We present a novel deep learning-based framework to generate embedding representations of fine-grained emotions.
Our framework integrates a contextualized embedding encoder with a multi-head probing model.
Our model is evaluated on the Empathetic Dialogue dataset and shows the state-of-the-art result for classifying 32 emotions.
arXiv Detail & Related papers (2021-04-20T16:55:15Z) - Emotional Video to Audio Transformation Using Deep Recurrent Neural
Networks and a Neuro-Fuzzy System [8.900866276512364]
Current approaches overlook the video's emotional characteristics in the music generation step.
We propose a novel hybrid deep neural network that uses an Adaptive Neuro-Fuzzy Inference System to predict a video's emotion.
Our model can effectively generate audio that matches the scene eliciting a similar emotion from the viewer in both datasets.
arXiv Detail & Related papers (2020-04-05T07:18:28Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.