2019 International Conference on Robotics and Automation (ICRA) 2019
DOI: 10.1109/icra.2019.8794474
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Egocentric Vision-based Future Vehicle Localization for Intelligent Driving Assistance Systems

Abstract: Predicting the future location of vehicles is essential for safety-critical applications such as advanced driver assistance systems (ADAS) and autonomous driving. This paper introduces a novel approach to simultaneously predict both the location and scale of target vehicles in the first-person (egocentric) view of an ego-vehicle. We present a multi-stream recurrent neural network (RNN) encoder-decoder model that separately captures both object location and scale and pixellevel observations for future vehicle l… Show more

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Cited by 117 publications
(84 citation statements)
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References 47 publications
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“…Fan et al [13] and Luc et al [30] learned feature to feature translation to forecast features into the future. To exploit the time dependency inherent in future prediction, many works use RNNs and LSTMs [58,48,50,54,49]. Liu et al [29] and Rybkin et al [45] formulated the translation from two consecutive images in a video by an autoencoder to infer the next frame.…”
Section: Related Workmentioning
confidence: 99%
“…Fan et al [13] and Luc et al [30] learned feature to feature translation to forecast features into the future. To exploit the time dependency inherent in future prediction, many works use RNNs and LSTMs [58,48,50,54,49]. Liu et al [29] and Rybkin et al [45] formulated the translation from two consecutive images in a video by an autoencoder to infer the next frame.…”
Section: Related Workmentioning
confidence: 99%
“…Such technologies require advanced decision making and motion planning systems that rely on estimates of the future position of road users in order to realize safe and effective mitigation and navigation strategies. Related research [46,1,36,23,37,12,13,43,45,32,33,47] has attempted to predict future trajectories by focusing on social conventions, environmental factors, or pose and motion constraints. They have shown to be more effective when the prediction model learns to extract these features by considering human-human (i.e., between road agents) or human-space (i.e., between a road agent and environment) interactions.…”
Section: Introductionmentioning
confidence: 99%
“…Yagi et al [17] incorporate different kinds of cues into a convolution-deconvolution (Conv1D) network to predict pedestrians' future locations. Yao et al [18] extend this work to autonomous driving scenarios by proposing a multi-stream RNN Encoder-Decoder (RNN-ED) architecture with both past vehicle locations and image features as inputs for anticipating vehicle locations.…”
Section: Related Workmentioning
confidence: 99%