Reliability-Aware and Robust Multi-sensor Fusion Toward Ego-Lane Estimation Using Artificial Neural Networks

In the field of road estimation, incorporating multiple sensors is essential to achieve a robust performance. However, the reliability of each sensor changes due to environmental conditions. Thus, we propose a reliability-aware fusion concept, which takes into account the sensor reliabilities. By that, the reliabilities are estimated explicitly or implicitly by classification algorithms, which are trained with extracted information from the sensors and their past performance compared to ground truth data. During the fusion, these estimated reliabilities are then exploited to avoid the impact of unreliable sensors. In order to prove our concept, we apply our fusion approach to a redundant sensor setup for intelligent vehicles containing three-camera systems, several lidars, and radar sensors. Since artificial neural networks (ANN) have produced great results for many applications, we explore two ways of incorporating them into our fusion concept. On the one hand, we use ANN as classifiers to explicitly estimate the sensors’ reliabilities. On the other hand, we utilize ANN to directly predict the ego-lane from sensor information, where the reliabilities are implicitly learned. By the evaluation with real-world recording data, the direct ANN approach leads to satisfactory road estimation.

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