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Foveated Image Processing for Faster Object Detection and Recognition in Embedded Systems Using Deep Convolutional Neural Networks

机译:使用深度卷积神经网络的嵌入式系统的更快对象检测和识别的变化图像处理

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Object detection and recognition algorithms using deep convolutional neural networks (CNNs) tend to be computationally intensive to implement. This presents a particular challenge for embedded systems, such as mobile robots, where the computational resources tend to be far less than for workstations. As an alternative to standard, uniformly sampled images, we propose the use of foveated image sampling here to reduce the size of images, which are faster to process in a CNN due to the reduced number of convolution operations. We evaluate object detection and recognition on the Microsoft COCO database, using foveated image sampling at different image sizes, ranging from 416×416 to 96×96 pixels, on an embedded GPU - an NVIDIA Jetson TX2 with 256 CUDA cores. The results show that it is possible to achieve a 4 × speed-up in frame rates, from 3.59 FPS to 15.24 FPS, using 416 × 416 and 128 × 128 pixel images respectively. For foveated sampling, this image size reduction led to just a small decrease in recall performance in the foveal region, to 92.0% of the baseline performance with full-sized images, compared to a significant decrease to 50.1% of baseline recall performance in uniformly sampled images, demonstrating the advantage of foveated sampling.
机译:使用深卷积神经网络(CNN)的对象检测和识别算法倾向于计算地实现。这为嵌入式系统(例如移动机器人)提供了特殊的挑战,其中计算资源往往远低于工作站。作为标准的替代,均匀采样的图像,我们提出了在此处使用FOVEATED的图像采样以减小由于卷积操作的数量减少而在CNN中加工的尺寸。我们在Microsoft Coco数据库上评估对象检测和识别,使用不同的图像大小的FOVEATED图像采样,从416×416到96×96像素,嵌入式GPU - 一个带有256个CUDA核心的NVIDIA Jetson TX2。结果表明,可以使用416×416和128×128像素图像从3.59fps到15.24 fps,从3.59 fps,从3.59 fps达到4倍的帧速度。对于Foveated采样,该图像尺寸减少导致难集区域中的召回性能的少量减少,占全尺寸图像的基线性能的92.0%,而在均匀采样中的基线召回性能的显着降低相比之下。图像,展示了对采样的优势。

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