Benedek, 2022 - Google Patents
Multi-Level Bayesian Models for Environment PerceptionBenedek, 2022
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- 3267416290193419057
- Author
- Benedek C
- Publication year
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This chapter presents the key problem statements and solutions discussed in the book. An overview is provided on timely challenges in environment perception, by introducing recent sensor technologies and methodologies which are efficient candidates to handle the tasks …
- 238000000034 method 0 abstract description 136
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