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首页> 外文期刊>Advanced Science Letters >Object Detection Framework for Multiclass Food Object Localization and Classification
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Object Detection Framework for Multiclass Food Object Localization and Classification

机译:对象检测框架,用于多种多组食物对象本地化和分类

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摘要

Detecting the instances of an object-class is a very important and crucial task in computer vision system prior to obtaining any further information. To determine the location of the object instances possess several challenges resulted from the object and image variations. In this paper,we propose a recognition framework for multiclass object detection to localize and classify the food objects to address the problem of searching multiclass objects. A typical food object, to compare to the other objects has non-rigid deformation and suffers from very large intraclass varianceand too little inter-class similarities. To strive a better recognition performance while designing this framework, the optimal food recognition components comprising localization, feature extraction and classification strategy were discovered through a literature review. Besides that, theproblems that are still remaining in this area critically discussed along with research direction that should be put into concentration for the future research.
机译:检测对象类的实例是在获得任何进一步信息之前在计算机视觉系统中的一个非常重要和重要的任务。要确定对象实例的位置具有由对象和图像变化产生的几个挑战。在本文中,我们提出了一种识别框架,用于多种多组对象检测来定位和分类食品对象以解决搜索多字符对象的问题。一个典型的食物对象,与其他物体进行比较具有非刚性变形,并且遭受非常大的内部陷入困境,其际相似之处太少。为了在设计该框架的同时努力识别性能,通过文献综述发现包括定位,特征提取和分类策略的最佳食品识别组件。此外,仍然在该地区仍然仍然存在的问题,以及研究方向讨论,这些研究方向应该投入未来的研究。

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