Object Detection and Segmentation for Scene Understanding via Random Forest

Bisma Riaz Chughtai, A. Jalal
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引用次数: 1

Abstract

In recent days, object detection become a vast topic in computer vision. Accurate object detection and scene understanding is not an easy task due to illumination, viewpoints, and color intensities. Visual features like color, texture, boundaries, and shape, make an image different from another image. The main goal of scene understanding is to machine work like a human and understand the visual information of an image. Currently, researchers working on novel approaches in this field to make a better understanding of the scene. Computer vision portrays a major role in different applications such as health, safety, security surveillance, traffic monitoring, autonomous driving car, object recognition, and tracking. In this paper, we work on a meaningful understanding of an image in the scene. To understand the scene we have done region-based segmentation, and for object detection and labeling, we use the tensor flow algorithm, for geometric features mean of each pixel, harry corner edge detection, and scale-invariant feature transform descriptor. And then object recognition by using random forest. We have performed this experiment on UIUC Sports dataset. The presented model achieved 89.45% recognition accuracy.
基于随机森林的场景理解中的目标检测和分割
近年来,目标检测成为计算机视觉领域的一个重要课题。由于光照、视点和色彩强度的影响,准确的物体检测和场景理解不是一件容易的事情。颜色、纹理、边界和形状等视觉特征使一幅图像与另一幅图像不同。场景理解的主要目标是让机器像人类一样工作,理解图像的视觉信息。目前,研究人员正在研究这一领域的新方法,以更好地了解场景。计算机视觉在健康、安全、安防监控、交通监控、自动驾驶汽车、物体识别和跟踪等不同应用中发挥着重要作用。在本文中,我们致力于对场景中的图像进行有意义的理解。为了理解场景,我们做了基于区域的分割,对于物体的检测和标记,我们使用了张量流算法,对于每个像素的几何特征均值,哈里角边缘检测,以及尺度不变的特征变换描述符。然后利用随机森林进行目标识别。我们在UIUC体育数据集上进行了这个实验。该模型的识别准确率达到89.45%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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