Uncertainty-aware weather-related road surface condition classification
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Publicerad
Författare
Typ
Examensarbete för masterexamen
Master's Thesis
Master's Thesis
Modellbyggare
Tidskriftstitel
ISSN
Volymtitel
Utgivare
Sammanfattning
Autonomous vehicles rely on collaborative systems for decision-making during operation,
one of which is machine learning algorithms. Using cameras and sensors
mounted on the car, these algorithms can analyse captured data to interpret surroundings,
enabling it to make informed and safe driving decisions. The algorithms
are trained on data gathered in the field. In real-time use, samples that do not belong
to the training distribution, referred to as Out-Of-Distribution (OOD) samples,
can occur, which the algorithm then confidently uses to make driving decisions. In
a worst-case scenario, this can lead to injuring passengers or property. The primary
objective of this thesis is to implement and analyse methods for detecting OOD
samples in a road surface condition model. The machine learning algorithm was a
convolutional neural network, trained to detect dry, wet and snowy road surface conditions.
The methods used to detect samples were Maximum Softmax Probability,
Energy-Based OOD detection, Outlier Exposure, Virtual Outlier Synthesis, Rectified
Activations, Deep Nearest Neighbour, and Virtual Logit Matching. Evaluation
of the methods involved three datasets - Cars, Slush and Glare - constructed from
the same database as the training data, thus considered as near OOD datasets. Additionally,
two publicly available datasets, CIFAR-10 and Texture were used as far
OOD datasets. Deep Nearest Neighbour and Virtual Logit Matching performed the
best, achieving near-perfect results, when evaluated on the far OOD datasets. When
tested on the cars dataset, Virtual Logit Matching exhibited a notable deviation in
performance compared to the other methods, although it still performed poorly. On
the rest of the near OOD data, the detectors did not outperform the two baseline
detectors, Energy-Based OOD detection and Maximum Softmax Probability.
Beskrivning
Ämne/nyckelord
Artificial Neural Networks, Convolutional Neural Network, Machine Learning, Out-Of-Distribution Detection, Road Climatology
