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Integration of top-down and bottom-up visual processing using a recurrent convolutional-deconvolutional neural network for semantic segmentation

机译:使用反复卷积 - 解卷积神经网络进行自上而下和自下而上的视觉处理的集成,用于语义分割

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摘要

Semantic segmentation has a wide array of applications such as scene understanding, autonomous driving, and robot manipulation tasks. While existing segmentation models have achieved good performance using bottom-up deep neural processing, this paper describes a novel deep learning architecture that integrates top-down and bottom-up processing. The resulting model achieves higher accuracy at a relatively low computational cost. In the proposed model, higher-level top-down information is transmitted to the lower layers through recurrent connections in an encoder and a decoder, and the recurrent connection weights are trained using backpropagation. Experiments on several benchmark datasets demonstrate that this use of top-down information improves the mean intersection over union by more than 3% compared with a state-of-the-art bottom-up only network using the CamVid, SUN-RGBD and PASCAL VOC 2012 benchmark datasets. Additionally, the proposed model is successfully applied to a dataset designed for robotic grasping tasks.
机译:语义分割具有各种应用,例如场景理解,自动驾驶和机器人操作任务。虽然现有的分割模型使用自下而上的深神经处理实现了良好的性能,但本文介绍了一种新颖的深度学习架构,其集成了自上而下和自下而上的处理。由此产生的模型以相对较低的计算成本实现更高的精度。在所提出的模型中,通过编码器和解码器中的复发连接将更高级别的自上而下信息发送到下层,并且使用反向验证训练复发连接权重。在几个基准数据集上的实验表明,与使用Camvid,Sun-RGBD和Pascal VOC的最新网络相比,这种使用自上而下信息的使用提高了超过3%的工会的交叉口3%。 2012年基准数据集。此外,所提出的模型成功应用于设计用于机器人掌握任务的数据集。

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