顺序主成分分析——一种用于图像压缩的硬件实现变换

T. Duong, Vu A. Duong
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引用次数: 1

摘要

本文介绍了jpl开发的用于特征提取/图像压缩的顺序主成分分析(SPCA)算法,该算法基于“主导项选择”无监督学习技术,与最先进的梯度下降技术相比,该技术需要的计算量要少一个数量级,结构也更简单。该算法本质上适用于紧凑、低功耗和高速的VLSI硬件实施例。本文将JPL的SPCA算法的无损图像压缩性能与最新的JPEG2000进行了比较,JPEG2000因其简化的硬件可实现性而被广泛使用。不管JPEG2000的数据结构如何,它的固定变换特性都不是最优的数据压缩技术。另一方面,传统的基于主成分分析的变换(pca变换)是一种数据依赖的结构变换。然而,由于其高度的计算和架构复杂性,在紧凑的VLSI硬件中实现PCA并不容易。相比之下,JPL的“主导项选择”SPCA算法第一次允许一个紧凑、低功耗的硬件实现强大的PCA算法。本文介绍了JPL的SPCA与JPEG2000的直接比较,结合了霍夫曼和算术编码来完成数据压缩操作。仿真结果表明,JPL的SPCA算法作为一种最优的数据依赖变换优于JPEG2000。当在硬件中实现时,该技术预计将非常适合未来NASA的自主机载图像数据处理任务,以提高通信带宽。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sequential Principal Component Analysis - A Hardware-Implementable Transform for Image Compression
This paper presents the JPL-developed Sequential Principal Component Analysis (SPCA) algorithm for feature extraction / image compression, based on “dominant-term selection” unsupervised learning technique that requires an order-of-magnitude lesser computation and has simpler architecture compared to the state of the art gradient-descent techniques. This algorithm is inherently amenable to a compact, low power and high speed VLSI hardware embodiment. The paper compares the lossless image compression performance of the JPL’s SPCA algorithm with the state of the art JPEG2000, widely used due to its simplified hardware implementability. JPEG2000 is not an optimal data compression technique because of its fixed transform characteristics, regardless of its data structure. On the other hand, conventional Principal Component Analysis based transform (PCA-transform) is a data-dependent-structure transform. However, it is not easy to implement the PCA in compact VLSI hardware, due to its highly computational and architectural complexity. In contrast, the JPL’s “dominant-term selection” SPCA algorithm allows, for the first time, a compact, low-power hardware implementation of the powerful PCA algorithm. This paper presents a direct comparison of the JPL’s SPCA versus JPEG2000, incorporating the Huffman and arithmetic coding for completeness of the data compression operation. The simulation results show that JPL’s SPCA algorithm is superior as an optimal data-dependent-transform over the state of the art JPEG2000. When implemented in hardware, this technique is projected to be ideally suited to future NASA missions for autonomous on-board image data processing to improve the bandwidth of communication.
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