应用感知图像压缩低成本和分布式植物表型

M. Minervini, S. Tsaftaris
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引用次数: 10

摘要

植物表型研究植物基因组如何与环境相互作用,影响植物的可观察性状(表型)。在我们追求高效和可持续农业的过程中,它变得越来越重要。虽然基因组测序变得越来越高效,但获取表型信息在很大程度上仍然是低通量的,因为高通量的解决方案昂贵且不普遍。分布式方法可以提供低成本的解决方案,提供高精度和吞吐量。低计算能力的传感器获取植物的延时图像,并将其发送到具有更高计算和存储容量的分析系统(例如,在云基础设施上运行的服务)。然而,这种系统需要将成像数据从传感器传输到接收器,这就需要对其进行有损压缩以降低带宽要求。在本文中,我们提出了一种应用感知图像压缩方法,其中传感器意识到其上下文(即成像植物),并利用来自接收器的反馈将比特率集中在感兴趣区域(ROI)上。我们使用带有ROI编码的JPEG 2000,因此保持了标准兼容性,并提供了低成本和低计算需求的解决方案。我们在拟南芥表型实验的几幅图像中评估了我们的解决方案,我们表明,对于传统指标(如PSNR)和应用感知指标,所提出的解决方案的性能在等效性能下提供了70%的比特率降低。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application-aware image compression for low cost and distributed plant phenotyping
Plant phenotyping investigates how a plant's genome, interacting with the environment, affects the observable traits of a plant (phenome). It is becoming increasingly important in our quest towards efficient and sustainable agriculture. While sequencing the genome is becoming increasingly efficient, acquiring phenotype information has remained largely of low throughput, since high throughput solutions are costly and not widespread. A distributed approach could provide a low cost solution, offering high accuracy and throughput. A sensor of low computational power acquires time-lapse images of plants and sends them to an analysis system with higher computational and storage capacity (e.g., a service running on a cloud infrastructure). However, such system requires the transmission of imaging data from sensor to receiver, which necessitates their lossy compression to reduce bandwidth requirements. In this paper, we propose an application aware image compression approach where the sensor is aware of its context (i.e., imaging plants) and takes advantage of the feedback from the receiver to focus bitrate on regions of interest (ROI). We use JPEG 2000 with ROI coding, and thus remain standard compliant, and offer a solution that is low cost and has low computational requirements. We evaluate our solution in several images of Arabidopsis thaliana phenotyping experiments, and we show that both for traditional metrics (such as PSNR) and application aware metrics, the performance of the proposed solution provides a 70% reduction of bitrate for equivalent performance.
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