Thesis work Automotive Audio Analysis using Music Information Retrieval

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profile Job Location:

Göteborg - Sweden

profile Monthly Salary: Not Disclosed
Posted on: 30+ days ago
Vacancies: 1 Vacancy

Job Summary

Thesis Worker at Volvo Cars
Welcome to explore the world of Volvo Cars by writing your thesis with us! As a thesis worker in our organization you are supported by a supervisor who follows you during your project. Through your thesis work you will be able to contribute to our company purpose providing freedom to move in a safe sustainable and personal way from day one!

About this opportunity - Background

At Volvo Cars delivering a premium in-vehicle audio experience is core to our brand identity. Historically evaluating sound quality has relied on subjective listening testsa process that is time-consuming costly and difficult to standardize. To innovate beyond these limitations we are seeking to pioneer a data-driven approach that connects objective acoustic measurements with human perception.
The key to this innovation lies in Music Information Retrieval (MIR) the interdisciplinary science of extracting meaningful information from audio. While developed for tasks like genre classification the power of MIR is its rich set of features that describe the character of a sound. The conceptual leap of this project is to treat our acoustic measurement data not as a simple graph but as a sound object to be computationally described and categorized just as MIR does with music.


This project aims to bridge the gap between engineering and perception by creating a quantitative language for subjective descriptors. Ambiguous listener terms like bright muddy harsh or punchy can be systematically mapped to specific combinations of objective features (e.g. linking brightness to spectral centroid). This will create a common precise language that connects our R&D teams with product marketing and ultimately our customers.


This thesis project is at the intersection of audio signal processing data science and automotive engineering. The core project is to explore adapt and apply MIR feature extraction methods possibly including features from other fields directly to our database of numerical acoustic measurements. This is a novel application as we are not analysing full songs. Instead the focus is on characterizing the sound system or Device Under Test (DUT) by analysing its detailed impulse response and transfer function.

The primary goal is to identify and engineer a set of robust features that can describe classify and cluster our vehicle audio profiles. This will form the foundation for a scalable framework to:
Benchmark our sound systems with objective repeatable metrics.
Identify and define a unique data-driven brand sound signature.
Implement a prototype database and dashboard for visualizing acoustic fingerprints and enabling interactive complex queries (e.g. What is the most bass-heavy sound system we have evaluated).
Explore the reliability of automatic subjective tagging as a precursor to a future predictive model. Example tags could be dull spatial honky punchy or boomy.

Scope of the thesis work

The student will work with our database of in-car acoustic measurements to:

Transform and Engineer Features: Convert raw numerical measurement data into a rich set of discrete MIR features (spectral temporal cepstral).
Apply Data Mining Techniques: Use clustering and classification algorithms to find similarities between car audio systems identify natural groupings and define acoustic profiles.
Design and Implement Database & Dashboard: Structure the extracted features in a queryable database. Develop an interactive web-based dashboard to visualize the data clusters and allow for comparative analysis.
Investigate Temporal Dynamics: Use temporal modelling from MIR and other fields to analyse how sound quality characteristics might change under different conditions.


The project is structured into four main phases:
1. Phase 1: Data Understanding and Preprocessing: Familiarization with the measurement database and development of a robust data cleaning and normalization pipeline.
2. Phase 2: Feature Engineering and Extraction: Extraction of a comprehensive set of MIR features (e.g. MFCCs spectral centroid roll-off flux) and engineering of novel features adapted for our specific signals.
3. Phase 3: Modelling Analysis and Implementation: Application of unsupervised machine learning models (e.g. K-Means DBSCAN PCA t-SNE) to cluster and analyse the feature data. Implementation of the database schema and development of the interactive dashboard prototype.
4. Phase 4: Validation Interpretation and Thesis Writing: Correlation of findings with subjective data interpretation of results from the dashboard and models and final thesis composition.

Deliverables
A validated set of adapted features specifically tailored for in-car acoustic measurements.
A documented database schema for storing the extracted MIR features and associated metadata.
An interactive prototype dashboard for visualizing comparing and querying the acoustic characteristics of the audio systems.
A final Masters Thesis report and presentation of the findings to our engineering team.

What youll bring

We are seeking a student pursuing a Masters degree in Electrical Engineering Computer Science Acoustics Data Science or a related field. The ideal candidate is passionate about audio technology and possesses a strong analytical mindset.


Required Skills:
Signal Processing: Strong theoretical and practical understanding of digital signals.
Data Science: Proficiency in machine learning feature engineering and data visualization.

Nice to have:
Python: Advanced programming skills with scientific computing and audio analysis libraries.
Databases / SQL: Experience in designing schemas and querying databases.
Dashboarding: Experience with creating interactive dashboards in Power BI.
Audio: Foundational knowledge of acoustics and psychoacoustics.

Duration

Tentative proposed thesis work period: 19th January 2026 to 26th of June 2026 (dates can be flexible with /- 7 days)
Academic credits: equivalent to 30 ECTS
Number of students: 1 student per project


Volvo Cars. For Life.

For nearly a century Volvo Cars has empowered people to move freely in a personal sustainable and safe way. Today we are driving bold advancements in electrification sustainability and automotive safety. To realise our ambitious vision we are seeking innovative minds who are ready to tackle the challenges of tomorrow today.

At Volvo Cars we believe extraordinary things are achieved by ordinary people with a passion for making a difference. If youre inspired by the opportunity to help redefine the future of mobility we invite you to be part of our journey.

Ready to take the next step

Applications should include your CV and a brief personal letter stating your interests within the given area and your thoughts and credentials. Submit your CV in English

Applications must be received no later than November 16 2025. We are prioritising direct applications to ensure a fair and efficient application process.

For questions regarding the recruitment process please contact Siddhant Gupta at

For specific questions about the position please reach out to Hiring Manager Ashish Shah at


As part of the recruitment process the final candidates might undergo a background check.

Welcome with your application!

Thesis Worker at Volvo CarsWelcome to explore the world of Volvo Cars by writing your thesis with us! As a thesis worker in our organization you are supported by a supervisor who follows you during your project. Through your thesis work you will be able to contribute to our company purpose providin...
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Key Skills

  • Dynamics AX
  • Lab
  • Application Engineering
  • Business Support
  • Application Support

About Company

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Volvo Car USA is a subsidiary of Volvo Car Group of Gothenburg, Sweden and is headquartered in Rockleigh, NJ, with regional sales offices located in Rockleigh, Summerville, SC, and Irvine, CA. In addition, Volvo Car US Operations, the home of our new US factory, is located in South Ca ... View more

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