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ArtPark

Perception Engineer in Bangalore

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  • Posted 11 hours ago
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Job Description

We are looking for a highly capable Perception Engineer to build robust perception systems for outdoor robotics. This role focuses on developing vision models, data pipelines, and inference systems for challenging real-world environments, with strong emphasis on accuracy, edge-case handling, maintainability, and deployment readiness. The ideal candidate should combine strong fundamentals with applied vision engineering expertise across image processing, deep learning, data-centric model development, failure analysis, and deployment optimization. We are looking for someone who can understand complex problems deeply, define clear evaluation standards, and build reliable perception pipelines for real-world operation.

Key Responsibilities

  • Design and develop perception pipelines for real-world environments using computer vision, deep learning, and geometric reasoning.
  • Build and improve models for scene understanding, recognition, segmentation, tracking, and spatial perception using modern deep learning architectures.
  • Develop perception systems for monocular scene understanding and depth-related tasks where explicit depth sensing may not be available.
  • Develop and evaluate online CNN models for human detection, tracking, and path prediction under occlusion for safe robotic operation.
  • Translate use cases into measurable ML objectives, success metrics, and acceptance criteria such as mIoU, mAP, precision/recall, latency, FPS, and failure-case coverage.
  • Own the data pipeline end to end: data collection planning, annotation workflow definition, dataset curation, preprocessing, augmentation, label quality checks, and post-processing.
  • Work with annotation teams and tools such as CVAT to create high-quality datasets, including pixel-wise annotations, taxonomy definition, and edge-case labeling.
  • Fine-tune and adapt modern foundation models such as SAM, DINOv2, and evaluate when they are useful versus custom task-specific architectures.
  • Apply both classical and modern vision techniques where appropriate.
  • Optimize models for embedded and edge platforms, with focus on compute efficiency, inference speed, memory constraints, and deployment practicality.
  • Build clean, maintainable, modular code and scalable training/inference pipelines with good engineering practices and reproducibility.
  • Collaborate with robotics and embedded teams to integrate perception outputs into navigation, planning, and control systems.
  • Maintain documentation, experiment records, deployment specifications, and clear records of model limitations and known failure modes.

About Company: We are a early stage start-up incubated inside ARTPARK, IISC. We are a fast-growing robotics startup building autonomous ground robots for agriculture and industrial applications. At our core, we believe in practical innovation, rapid prototyping, and solving real-world problems with smart, rugged, and reliable robots. Interns here get hands-on exposure, work directly with the founding team, and contribute to meaningful projects that go from concept to field deployment.

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About Company

Job ID: 145765949

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