图像的深度上下文化压缩卸载

Bo Chen, Zhisheng Yan, Hongpeng Guo, Zhe Yang, A. Ali-Eldin, P. Shenoy, K. Nahrstedt
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引用次数: 2

摘要

近年来,传感器已成为我们生活中不可或缺的一部分,相机是最受欢迎和广泛部署的传感器之一。摄像头产生了许多基于视觉的物联网应用,通过在移动或嵌入式设备等终端设备上执行分析,生成对实时视频流的高级理解。通常,这些应用程序是用深度学习(DL)模型构建的,以执行复杂的视觉任务,例如图像分类和目标检测。由于在靠近相机的终端设备上运行DL模型的成本过高,并且计算能力有限,因此广泛采用将计算卸载到附近功能强大的边缘服务器上。但是,终端设备有限的卸载带宽与实时视频流产生的大量图像数据之间存在差距。在本文中,我们提出了深度上下文化图像压缩卸载(DCCOI),这是一个轻量级,上下文感知和带宽高效的图像卸载框架。DCCOI由空间自适应编码器和生成解码器组成,前者是一种轻量级的神经网络,用于对图像进行空间自适应压缩,后者用于从压缩后的数据中重建图像。与现有的基于dl的编码器相比,空间自适应编码器允许根据图像区域中的信息将图像区域编码为不同数量的特征值。这为图像压缩提供了一种变长编码方法,与现有基于dl的压缩方法采用的固定长度编码方法相比,这是一种更优的压缩方法,并且在精度和压缩率之间进行了更好的权衡。在服务于基于对象检测的应用程序时,我们针对几种基线压缩技术评估DCCOI。结果表明,DCCOI大致将JPEG的卸载大小减少了9倍,DeepCOD(最先进的卸载方法)减少了20%,精度相似,压缩开销小于50ms。
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Deep Contextualized Compressive Offloading for Images
Recent years have witnessed sensors becoming an indispensable part of our life with the camera being one of the most popular and widely deployed sensors. The camera gives rise to numerous vision-based IoT applications that generate high-level understandings of a live video stream by performing analysis on end devices like mobile or embedded devices. Typically, these applications are built with deep learning (DL) models to conduct complex vision tasks, e.g., image classification and object detection. Due to the prohibitive cost of running DL models on end devices close to the camera and with limited computation capabilities, it is widely adopted to offload the computation to a nearby powerful edge server. However, there is a gap between the restricted offloading bandwidth of the end device and the large volume of image data incurred by the live video stream. In this paper, we present Deep Contextualized Compressive Offloading for Images (DCCOI), a lightweight, context-aware, and bandwidth-efficient offloading framework for images. DCCOI consists of the spatial-adaptive encoder, a lightweight neural network, to spatial-adaptively compress the image, and the generative decoder for reconstructing the image from the compressed data. In contrast to existing DL-based encoders, the spatial-adaptive encoder allows an image region to be encoded into different numbers of feature values based on the information in it. This offers a variable-length coding method for image compression, which is a more optimal way for compression than the fix-length coding method took by existing DL-based compression approaches and demonstrates superior accuracy-compression rate trade-offs. We evaluate DCCOI against several baseline compression techniques while serving an object detection-based application. The results show that DCCOI roughly reduces the offloading size of JPEG by a factor of 9 and DeepCOD, the state-of-the-art offloading approach, by 20% with similar accuracy and a compression overhead less than 50ms.
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