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引用次数: 34
摘要
随着深度学习的出现,机器学习系统能够识别和分类图像中感兴趣的对象。在目标识别与分类领域取得了诸多进展。我们的研究工作主要集中在改进R-CNN, Fast R-CNN,YOLO架构。研究的重点是利用区域建议网络(RPN)提取图像中感兴趣的区域。RPN根据对象得分输出图像。输出对象经过Roll Polling进行分类。我们的研究工作集中在使用基于自定义的图像数据集来训练更快的R-CNN。我们训练的网络有效地从由多个对象组成的图像中检测对象。我们的网络需要至少3.0或更高的GPU能力。
Region-based Object Detection and Classification using Faster R-CNN
With the advent of Deep Learning,the machine learning systems are able to recognize and classify objects of interest in an image.Various advancement has been done in the field of object recognition and classification.Our research work focusses on improving the R-CNN, Fast R-CNN,YOLO architecture.The work focussed on using Region Proposals Network(RPN) to extract region of interest in an image.RPN outputs an image based on the objectness score.The output objects are subjected to Roll Polling for classification.Our research work focusses on training Faster R-CNN using custom based data set of images. Our trained network efficiently detects objects from an image consisting of multiple objects.Our network requires minimum GPU capability of 3.0 or higher.