Automatic Annotation of Object Instances by Region-Based Recurrent Neural Networks

Ionut Ficiu, Radu Stilpeanu, Cosmin Toca, A. Petre, C. Patrascu, M. Ciuc
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引用次数: 1

Abstract

In recent years, a wide variety of automatic, semiautomatic and manual approaches to image annotation have been proposed. These prerequisites have been driven by continuous advances of deep learning algorithms that often encounter the problem of insufficient or inappropriate training data, as well as sub-par markings’ accuracy which can have a direct impact on the model’s performance regardless. The main contribution of this paper is the development of a complex annotation framework able to automatically generate high-quality markings. The annotation work-flow aims to be an iterative process allowing automatic labeling of object bounding boxes, while simultaneously predicting the polygon outlining the object instance inside the box. The markings’ format is fully compatible with COCO Detection & Panoptic APIs that provide open-source interfaces for loading, parsing, and visualizing annotations. Following the completion of the research project funding this research, the code will be publicly available.
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基于区域递归神经网络的对象实例自动标注
近年来,人们提出了各种各样的自动、半自动和手动图像标注方法。这些先决条件是由深度学习算法的不断进步所驱动的,这些算法经常遇到训练数据不足或不适当的问题,以及标记的准确性低于标准,这可能会对模型的性能产生直接影响。本文的主要贡献是开发了一个能够自动生成高质量标记的复杂注释框架。标注工作流程旨在成为一个迭代过程,允许自动标记对象边界框,同时预测框内对象实例的多边形轮廓。标记的格式与COCO Detection & Panoptic api完全兼容,后者提供了用于加载、解析和可视化注释的开源接口。在资助本研究的研究项目完成后,代码将向公众开放。
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