30hp-Feasibility of visual models for real-time explainability in surround-view autonomous driving
Om jobbet
Introduction:
Thesis work is an excellent way to get closer to Scania and build relationships for the future. Many of today's employees began their Scania career with their degree project.
Background:
Autonomous vehicles rely on complex perception and planning pipelines that are often opaque. For safe deployment, systems must not only act but alsoexplain their reasoningin human-understandable terms. RecentVisual-Language Models (VLMs)show promise in generating natural-language descriptions of visual scenes, yet their feasibility forreal-time, on-vehicle explainabilityremains unexplored-especially insurround-view settingswhere multiple cameras capture a 360° environment.
Problem:
This thesis investigates whether VLMs can generatetrustworthy, real-time explanationsof driving decisions under the latency and resource constraints of automotive hardware, while handlingmulti-camera inputsefficiently.
Research Questions:
Objectives:
Education/program/focus:
Indicate education, program or focus: Masters program on computer science with a focus on AI
Number of students: 1
Start date for the thesis work: January 2026
Estimated time required: 6 months
Contact persons and supervisors:
Mohammad Nazari, Ph.D.,
Mohammad.nazari@scania.com
Application:
Your application must include a CV, personal letter and transcript of grades
A background check might be conducted for this position. We are conducting interviews continuously and may close the recruitment earlier than the date specified.
Requisition ID: 22054
Number of Openings: 1.0
Part-time / Full-time: Full-time
Permanent / Temporary: Temporary
Country/Region: SE
Location(s):
Södertälje, SE, 151 38
Required Travel: 0%
Workplace: On-site
Thesis work is an excellent way to get closer to Scania and build relationships for the future. Many of today's employees began their Scania career with their degree project.
Background:
Autonomous vehicles rely on complex perception and planning pipelines that are often opaque. For safe deployment, systems must not only act but alsoexplain their reasoningin human-understandable terms. RecentVisual-Language Models (VLMs)show promise in generating natural-language descriptions of visual scenes, yet their feasibility forreal-time, on-vehicle explainabilityremains unexplored-especially insurround-view settingswhere multiple cameras capture a 360° environment.
Problem:
This thesis investigates whether VLMs can generatetrustworthy, real-time explanationsof driving decisions under the latency and resource constraints of automotive hardware, while handlingmulti-camera inputsefficiently.
Research Questions:
- Can VLMs provide natural-language explanations within strict real-time budgets (<100 ms)?
- Do the explanations align with actual driving events and human expectations?
- How can surround-view inputs be processed for VLMs without exceeding compute limits?
- How robust are the explanations under adverse or out-of-distribution conditions?
Objectives:
- Benchmark state-of-the-art VLMs for latency and throughput on GPU and embedded platforms.
- Develop a pipeline for surround-view fusion and efficient input handling.
- Propose methods to ground explanations in structured driving representations (lanes, maneuvers, traffic rules).
- Evaluate explanation faithfulness, clarity, and safety relevance through automatic and human studies.
Education/program/focus:
Indicate education, program or focus: Masters program on computer science with a focus on AI
Number of students: 1
Start date for the thesis work: January 2026
Estimated time required: 6 months
Contact persons and supervisors:
Mohammad Nazari, Ph.D.,
Mohammad.nazari@scania.com
Application:
Your application must include a CV, personal letter and transcript of grades
A background check might be conducted for this position. We are conducting interviews continuously and may close the recruitment earlier than the date specified.
Requisition ID: 22054
Number of Openings: 1.0
Part-time / Full-time: Full-time
Permanent / Temporary: Temporary
Country/Region: SE
Location(s):
Södertälje, SE, 151 38
Required Travel: 0%
Workplace: On-site
SCANIA Aktiebolag
FöretagSCANIA Aktiebolag
Visa alla jobb för SCANIA Aktiebolag