Focus on the Challenges: Analysis of a User-friendly Data Search Approach with CLIP in the Automotive Domain
Handling large amounts of data has become a key for developing automated driving systems. Especially for developing highly automated driving functions, working with images has become increasingly challenging due to the sheer size of the required data. Such data has to satisfy different requirements...
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Zusammenfassung: | Handling large amounts of data has become a key for developing automated
driving systems. Especially for developing highly automated driving functions,
working with images has become increasingly challenging due to the sheer size
of the required data. Such data has to satisfy different requirements to be
usable in machine learning-based approaches. Thus, engineers need to fully
understand their large image data sets for the development and test of machine
learning algorithms. However, current approaches lack automatability, are not
generic and are limited in their expressiveness. Hence, this paper aims to
analyze a state-of-the-art text and image embedding neural network and guides
through the application in the automotive domain. This approach enables the
search for similar images and the search based on a human understandable
text-based description. Our experiments show the automatability and
generalizability of our proposed method for handling large data sets in the
automotive domain. |
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DOI: | 10.48550/arxiv.2304.10247 |