Abstract—In an environment of intelligent transportation systems, interaction with other drivers via identifying their
intentions becomes a challenging and unavoidable problem for the driverless vehicles. In this paper, we propose a human-like decision model for unsignalized intersections. An intention-aware prediction for other drivers via a CNN method with multipleobject tracking and Kalman-Filter operations is considered in the developed model to construct the interaction of other drivers. A human-like decision model according to the moving intention of
the obstacle was proposed to generate the strategy of an autonomous vehicle. Our approach method is validated on a real autonomous vehicle in the presence of human-driven vehicles through an on-road test.
Keywords—CNN, intention, multiple-object tracking
- IA-09-0008 (684K)