Leaf Shape Descriptor for Tree Species Identification

Itheri Yahiaoui, O. Mzoughi, N. Boujemaa
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引用次数: 40

Abstract

The problem of automatic leaf identification is particularly challenging because, in addition to constraints derived from image processing such as geometric deformations (rotation, scale, translation) and illumination variations, it involves difficulties arising from foliar properties. These include two main aspects: the first is the enormous number and diversity of leaf species and the second, which is relevant to some special species, is the high inter-species and the low intra-species similarity. In this paper, we present a novel boundary-based approach that attempts to overcome the most of these constraints. This method has been compared to results obtained in the image CLEF 2011 plant identification task. The main advantage of this first benchmark edition is that different image retrieval techniques were tested and a crowd-sourced leaf dataset was used. Our method provides the best classification rate for scan and scan-like pictures. Besides its high accuracy, our method satisfies real-time requirements with a low computational cost.
树种鉴定用叶形描述符
自动叶片识别的问题尤其具有挑战性,因为除了图像处理的限制,如几何变形(旋转、缩放、平移)和光照变化,还涉及到叶片特性带来的困难。这主要包括两个方面:一是叶片物种的数量和多样性巨大;二是与某些特殊物种有关的种间相似性高,种内相似性低。在本文中,我们提出了一种新的基于边界的方法,试图克服大多数这些限制。将该方法与CLEF 2011图像植物识别任务中获得的结果进行了比较。第一个基准测试版本的主要优点是测试了不同的图像检索技术,并使用了众包叶子数据集。我们的方法为扫描和类扫描图像提供了最佳的分类率。该方法不仅精度高,而且计算成本低,满足实时性要求。
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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