VoNet:使用卷积神经网络进行车辆方向分类

Ratanaksamrith You, Jangwoo Kwon
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引用次数: 6

摘要

本文提出了一种新的卷积神经网络,用于在给定图像中对车辆的方向(或视点)进行分类。目前自动驾驶汽车上装备的传感器虽然能够对附近的车辆产生边界框,但不能识别车辆的视点。在非常复杂的环境中分析周围车辆的方向对自动驾驶具有重要意义。本研究仅利用捕获的图像,对车辆视点进行分类:(1)前方;(2)后方;(3);(4)前端;(5)后侧。使用深度卷积神经网络作为执行分类任务的工具。该方法涉及使用大规模汽车数据集检查不同的CNN架构。除此之外,该模型的目标是在有限的硬件资源下足够小、足够快。我们能够在Nvidia GRID K520 GPU上实现95%的准确率,57ms的推理时间和1.6 MB的Caffe模型大小。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
VoNet: vehicle orientation classification using convolutional neural network
This paper presents a novel convolution neural network for classifying the orientation (or viewpoint) of a vehicle in a given image. Current equipping sensors in self-driving car is able to produce bounding box of vehicles in the proximity, but it does not recognize the viewpoint of them. Analyzing surrounding cars' direction in very complex environment has a significant role for autonomous driving. Utilizing nothing but a captured image, the purpose of this research is to classify viewpoint of vehicle: (1) front; (2) rear; (3) side; (4) front-side; and (5) rear-side. Deep convolutional neural network is used as the tool in performing classification task. The approach involves examining different CNN architectures using a large scale car dataset. In addition to that, the goal of the model is to be small and fast enough for limited hardware resource. We are able to achieve 95% accuracy, 57ms inference time on Nvidia GRID K520 GPU, and 1.6 MB Caffe model size.
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