基于特征耦合的高效自动图像分割的增量反馈学习机制

M. Bhagwat, G. Gupta, Asha Ambhaikar
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引用次数: 0

摘要

图像分割是所有现代高效图像处理系统的先决条件。为了完成这项任务,图像处理专家设计和部署了各种特定于应用程序的算法。这些系统在特定于上下文的模式下工作,其中所有分割输出都受到系统训练的图像上下文的限制。为了将这些系统部署到其他领域,需要进行复杂的调优和优化操作。这降低了这些系统模型对实时用例的适用性,而实时用例需要通用的分割方法。这些用例包括但不限于场景分类、卫星图像分类、产量预测、交通检测等。此外,通用图像分割模型只能在预先设定的应用场景下有效工作,需要不断训练以提高其适用性。重新训练这些系统增加了计算成本,并且需要大量的训练和测试延迟。为了克服这些缺点,本文提出了一种具有特征耦合的增量反馈学习机制。该模型采用多种图像分割方法,分析颜色、纹理和形状信息;并将其映射到相关的图像特征上。这些特征与分割质量指标(如峰值信噪比(PSNR)、优点图(FOM)、最小均方误差(MMSE)和概率随机指数(PRI))一起跟踪,以评估最佳分割算法。这些特征使用集成分类模型进行分类,以选择最有效的分割方法,最大化PSNR和PRI,同时最小化MMSE。参数评价表明,与标准自动分割模型相比,该模型的分割准确率提高了8%,误报率降低了15%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Incremental feedback learning mechanism for highly efficient automatic image segmentation with feature coupling
Segmentation of images is a pre-requisite for all modern high efficiency image processing system. In order to perform this task, various application specific algorithms are designed and deployed by image processing experts. These systems work on a context-specific mode, wherein all segmentation outputs are restricted by context of images for which the system is trained. In order to deploy these systems to other domains, complex tuning and optimization operations are needed. This reduces applicability of these system models for real time use cases, where general purpose segmentation methods are needed. These use cases include but are not limited to, scene classification, satellite image classification, yield prediction, traffic detection, etc. Moreover, general purpose image segmentation models work effectively only under a pre-set types of application scenarios, and need to be constantly trained in order to improve their applicability. Retraining these systems increases computational costs, and requires large training and testing delays. In order to remove these drawbacks, in this text an incremental feedback learning mechanism with feature coupling is proposed. The proposed model uses a wide variety of image segmentation methods that analyze colour, texture & shape information; and map it with relevant image features. These features are traced along with segmentation quality metrics like peak signal to noise ratio (PSNR), figure of merit (FOM), minimum mean squared error (MMSE), and probabilistic random index (PRI) in order to evaluate the best segmentation algorithm. These features are classified using an ensemble classification model for selection of the most efficient segmentation method that maximizes PSNR, & PRI while minimizing MMSE. Parametric evaluation suggests that the proposed model is able to improve segmentation accuracy by 8%, and reduce false alarm rate by 15% when compared with standard automatic segmentation models.
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