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#Schick multi blade model software
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#Schick multi blade model driver
Results show, that this approach leads to an accurate imitation of the human driver with an inference capability of more than 60 FPS.Ĭ. Experiments are performed on a recorded data set of real world drivings. The model accesses multiple time axes: temporal features of multiple image frames are extracted through a combination of Convolution and LSTM layers while it can also make assumptions about the future road condition with the use of upcoming Ground Truth road bank angle changes. The raw image data from a single front facing camera is mixed with recorded vehicle data and a map based predicted road bank angle gradient vector. The proposed spatio-temporal Mixed Fusion model extends the present end-to-end models and consist of multiple levels of fusions. In this work four temporal fusion methods are evaluated based on three different Deep Learning models. To model the human driving behavior it is not sufficient to rely solely on individual, noncontiguous camera frames without taking vehicle signals or road specific features into account. Deep Learning based behavior reflex methods found their way into modern vehicles.
