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首页> 外文期刊>Ecological informatics: an international journal on ecoinformatics and computational ecology >RoI detection and segmentation algorithms for marine mammals photo-identification
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RoI detection and segmentation algorithms for marine mammals photo-identification

机译:ROI检测与海洋哺乳动物的分割算法照片识别

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摘要

Traditional marine mammal photo-identification is based on recognizing the appearances of the same individuals in pictures taken at different places and times. This task is traditionally performed by Biologists or other Scientists, which may demand a heavy cognitive burden and appreciable processing time searching and selecting information from thousands of pictures. Recently crowdsourcing and citizen science arose as a significant information source of potential scientific use. In particular, the use of non-professional photographs taken by the general public is being leveraged by many scientific projects. This represents an opportunity to enlarge the picture database required in trustable capture-recapture models, but at the same time human-assisted matching becomes unfeasible. Automated image analysis may represent an obvious aid, but applying image analytics to match individuals in large unfiltered datasets may be too slow and full of spurious results. Another strategy may be first to filter out useless images or parts thereof, retaining only the regions of interest (RoIs) in which appears the actual visible portion of the animal to be identified. In this work, we explore and develop a multi-criterion RoI detection for marine mammal pictures taken in the open. Particularly we focus on Commerson's dolphins pictures. Popular RoI detection algorithms, like Haar-wavelet-based methods, are show to perform poorly. For this reason, a convolutional neural network and a multifractal classifier based on color and texture features were developed, achieving significantly better outcomes. The resulting RoIs are much more robust, can be automated, and reduce the further burden of the identification process, either assisted or unassisted.
机译:传统的海洋哺乳动物照片识别是基于在不同地方和时间拍摄的图片中的同一个人的外表。该任务传统上由生物学家或其他科学家们进行,这可能需要沉重的认知负担和可观的处理时间搜索和选择来自数千张图片的信息。最近众群和公民科学是作为潜在科学用途的重要信息来源。特别是,许多科学项目正在利用普通公众采取的非专业照片。这代表了扩大可信捕获重新捕获模型所需的图片数据库的机会,但同时人工辅助匹配变得不可行。自动图像分析可以代表一个明显的辅助,但是应用图像分析以匹配大未经过滤的数据集中的个体可能太慢并且充满了虚假的结果。另一种策略可以首先过滤滤除无用的图像或其部分,仅保留感兴趣的区域(ROI),其出现了待识别的动物的实际可见部分。在这项工作中,我们探索并开发了在开放式中拍摄的海洋哺乳动物图片的多标准ROI检测。特别是我们专注于曼德邦的海豚图片。流行的ROI检测算法,如基于HAAR-小波的方法,展示表现不佳。因此,开发了一种卷积神经网络和基于颜色和纹理特征的多法分类器,实现了更好的结果。由此产生的ROI是更强大的,可以自动化,并降低识别过程的进一步负担,无论是辅助还是没有归档。

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