Neural network analysis of MINERVA scene analysis benchmark

Markos Markou, Sameer Singh, Mona Sharma
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引用次数: 4

Abstract

Scene analysis is an important area of research with the aim of identifying objects and their relationships in natural scenes. The MINERVA benchmark has recently been introduced in this area for testing different image processing and classification schemes. We present results on the classification of eight natural objects in the complete set of 448 natural images using neural networks. An exhaustive set of experiments with this benchmark has been conducted using four different segmentation methods and five texture-based feature extraction methods. The results in this paper show the performance of a neural network classifier on a ten fold cross-validation task. On the basis of the results produced, we are able to rank how well different image segmentation algorithms are suited to the task of region of interest identification in these images, and we also see how well texture extraction algorithms rank on the basis of classification results.
神经网络分析MINERVA场景分析基准
场景分析是一个重要的研究领域,其目的是识别自然场景中的物体及其关系。MINERVA基准测试最近被引入该领域,用于测试不同的图像处理和分类方案。我们给出了使用神经网络对448张自然图像中的8个自然物体进行分类的结果。使用四种不同的分割方法和五种基于纹理的特征提取方法对该基准进行了详尽的实验。本文的结果显示了神经网络分类器在十倍交叉验证任务上的性能。根据产生的结果,我们能够对不同的图像分割算法在这些图像中适合感兴趣区域识别任务的程度进行排名,并且我们还可以看到纹理提取算法在分类结果的基础上排名如何。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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