Common Traffic Sign Recognition (TSR) systems
usually neglect additional traffic signs and do not evaluate those
signs. This is a problem because such additional signs can
provide important information for the current driving situation
and the validity of the main traffic sign. In this paper, we
propose a TSR system being able to recognize and evaluate
additional signs, proven on the example of the traffic sign combination ’80 km/h when wet’. The TSR task is separated in the
detection of the traffic signs and the subsequent classification
of the signs with their possible additional signs. A validation
accuracy of 98% for the classification of the speed limit sign
80 km/h and 96% for the classification of the additional sign
when wet has been achieved. According to the traffic rules,
the additional sign ’when wet’ restricts the speed limit sign
’80 km/h’ to be only valid if the road is wet. For evaluating
the sign combination correctly, a Road Condition Classification
system is needed. We also compare several methods based on
convolutional neural networks to detect the road condition (wet
or dry), which reaches a validation accuracy above 93% and
thereby outperforms current state-of-the-art.
«
Common Traffic Sign Recognition (TSR) systems
usually neglect additional traffic signs and do not evaluate those
signs. This is a problem because such additional signs can
provide important information for the current driving situation
and the validity of the main traffic sign. In this paper, we
propose a TSR system being able to recognize and evaluate
additional signs, proven on the example of the traffic sign combination ’80 km/h when wet’. The TSR task is separated in the
detection of...
»