Kotrba, 2023 - Google Patents
Simultanous multispectral detection of objectsKotrba, 2023
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- 4062519668565018510
- Author
- Kotrba T
- Publication year
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Snippet
Object detection in multispectral images, eg, visible and infrared light, can benefit real-world applications such as autonomous driving or traffic surveillance. This is due to complementary information, especially in adverse weather and low illumination conditions …
Classifications
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