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Object Classification in Image Data Using Machine Learning Models

机译:使用机器学习模型的图像数据中的对象分类

摘要

Combined color and depth data for a field of view is received. Thereafter, using at least one bounding polygon algorithm, at least one proposed bounding polygon is defined for the field of view. It can then be determined, using a binary classifier having at least one machine learning model trained using a plurality of images of known objects, whether each proposed bounding polygon encapsulates an object. The image data within each bounding polygon that is determined to encapsulate an object can then be provided to a first object classifier having at least one machine learning model trained using a plurality of images of known objects, to classify the object encapsulated within the respective bounding polygon. Further, the image data within each bounding polygon that is determined to encapsulate an object is provided to a second object classifier having at least one machine learning model trained using a plurality of images of known objects, to classify the object encapsulated within the respective bounding polygon. A final classification for each bounding polygon is then determined based on the output of the first classifier machine learning model and the output of the second classifier machine learning model.
机译:接收用于视场的组合的颜色和深度数据。此后,使用至少一种边界多边形算法,为视场定义至少一个建议的边界多边形。然后,可以使用具有至少一个使用已知对象的多个图像训练的机器学习模型的二进制分类器来确定每个提议的边界多边形是否封装了对象。然后可以将被确定为封装对象的每个边界多边形内的图像数据提供给第一对象分类器,该第一对象分类器具有使用已知对象的多个图像训练的至少一个机器学习模型,以对封装在各个边界多边形内的对象进行分类。 。此外,将确定为封装对象的每个边界多边形内的图像数据提供给第二对象分类器,该第二对象分类器具有至少一个使用多个已知对象图像训练的机器学习模型,以对封装在各个边界多边形内的对象进行分类。 。然后基于第一分类器机器学习模型的输出和第二分类器机器学习模型的输出来确定每个边界多边形的最终分类。

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