首页> 美国卫生研究院文献>Sensors (Basel Switzerland) >A Visual Sensing Concept for Robustly Classifying House Types through a Convolutional Neural Network Architecture Involving a Multi-Channel Features Extraction
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A Visual Sensing Concept for Robustly Classifying House Types through a Convolutional Neural Network Architecture Involving a Multi-Channel Features Extraction

机译:通过卷积神经网络架构涉及多通道特征提取的卷积神经网络架构的视觉感应概念

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摘要

The core objective of this paper is to develop and validate a comprehensive visual sensing concept for robustly classifying house types. Previous studies regarding this type of classification show that this type of classification is not simple (i.e., tough) and most classifier models from the related literature have shown a relatively low performance. For finding a suitable model, several similar classification models based on convolutional neural network have been explored. We have found out that adding/involving/extracting better and more complex features result in a significant accuracy related performance improvement. Therefore, a new model taking this finding into consideration has been developed, tested and validated. The model developed is benchmarked with selected state-of-art classification models of relevance for the “house classification” endeavor. The test results obtained in this comprehensive benchmarking clearly demonstrate and validate the effectiveness and the superiority of our here developed deep-learning model. Overall, one notices that our model reaches classification performance figures (accuracy, precision, etc.) which are at least 8% higher (which is extremely significant in the ranges above 90%) than those reached by the previous state-of-the-art methods involved in the conducted comprehensive benchmarking.
机译:本文的核心目标是开发和验证一个全面的视觉传感概念,可为强大的级别进行课程类型。以前关于这种类型的分类的研究表明,这种类型的分类并不简单(即,坚韧),并且来自相关文献的大多数分类器模型都显示出相对较低的性能。为了找到合适的模型,探讨了基于卷积神经网络的几种类似的分类模型。我们发现添加/涉及/提取更好,更复杂的功能导致显着的相关性能改进。因此,已经开发,测试和验证了考虑到这一发现的新模型。该模型开发的是与所选的最先进的分类模型为基准,与“房屋分类”努力相关。在这一综合基准中获得的测试结果明确展示并验证了我们在这里开发了深度学习模式的有效性和优越性。总体而言,我们的模型达到分类性能数据(准确性,精度等)的一条通知,这些数字至少高出8%(在90%以上的范围内极为显着),而不是之前的状态达到的 - 涉及进行的综合基准涉及的艺术方法。

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