Visual Object Detection in Factory Environment

Citation Author(s):
Marius
Wenning
Submitted by:
Marius Wenning
Last updated:
Mon, 02/21/2022 - 13:23
DOI:
10.21227/gpnv-t367
Data Format:
License:
0
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Abstract 

Automated driving in public traffic still faces many technical and legal challenges. However, automating vehicles at low speeds in controlled industrial environments is already achievable today. A reliable obstacle detection is mandatory to prevent accidents. Recent advances in convolutional neural network-based algorithms have made it conceivable to replace distance measuring laser scanners with common monocameras. In this paper, we present a photorealistic 3D simulated factory environment for testing vision-based obstacle detecting algorithms preceding field tests on the safety-critical system. We further test two obstacle detection methods employing state-of-the-art semantic segmentation and depth estimation in a range of challenging test scenarios. Both models performed well under normal factory settings. Some edge cases, however, lead to vehicle crashes.

Instructions: 

The data set contains training data and testing data. We provide the camera image, the depth groundtruth data and the object mask.

Funding Agency: 
BMWi