Publication | Open Access
Seeing Through Fog Without Seeing Fog: Deep Sensor Fusion in the Absence of Labeled Training Data.
26
Citations
36
References
2019
Year
EngineeringMachine LearningMulti-sensor Information FusionMulti-image FusionImage AnalysisData SciencePattern RecognitionMultimodal Sensor StreamsMultimodal Sensor FusionFusion LearningRobot LearningSensor FusionMachine VisionObject DetectionData FusionLabeled Training DataComputer ScienceExtensive Validation DatasetDeep LearningFeature FusionFog WithoutComputer VisionDeep Sensor Fusion
The fusion of multimodal sensor streams, such as camera, lidar, and radar measurements, plays a critical role in object detection for autonomous vehicles, which base their decision making on these inputs. While existing methods exploit redundant information in good environmental conditions, they fail in adverse weather where the sensory streams can be asymmetrically distorted. These rare edge-case scenarios are not represented in available datasets, and existing fusion architectures are not designed to handle them. To address this challenge we present a novel multimodal dataset acquired in over 10,000km of driving in northern Europe. Although this dataset is the first large multimodal dataset in adverse weather, with 100k labels for lidar, camera, radar, and gated NIR sensors, it does not facilitate training as extreme weather is rare. To this end, we present a deep fusion network for robust fusion without a large corpus of labeled training data covering all asymmetric distortions. Departing from proposal-level fusion, we propose a single-shot model that adaptively fuses features, driven by measurement entropy. We validate the proposed method, trained on clean data, on our extensive validation dataset. Code and data are available here this https URL.
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