Rich feature hierarchies for accurate object detection and semantic segmentation

R Girshick, J Donahue, T Darrell… - Proceedings of the …, 2014 - openaccess.thecvf.com
Proceedings of the IEEE conference on computer vision and …, 2014openaccess.thecvf.com
Object detection performance, as measured on the canonical PASCAL VOC dataset, has
plateaued in the last few years. The best-performing methods are complex ensemble
systems that typically combine multiple low-level image features with high-level context. In
this paper, we propose a simple and scalable detection algorithm that improves mean
average precision (mAP) by more than 30% relative to the previous best result on VOC 2012-
--achieving a mAP of 53.3%. Our approach combines two key insights:(1) one can apply …
Abstract
Object detection performance, as measured on the canonical PASCAL VOC dataset, has plateaued in the last few years. The best-performing methods are complex ensemble systems that typically combine multiple low-level image features with high-level context. In this paper, we propose a simple and scalable detection algorithm that improves mean average precision (mAP) by more than 30% relative to the previous best result on VOC 2012---achieving a mAP of 53.3%. Our approach combines two key insights:(1) one can apply high-capacity convolutional neural networks (CNNs) to bottom-up region proposals in order to localize and segment objects and (2) when labeled training data is scarce, supervised pre-training for an auxiliary task, followed by domain-specific fine-tuning, yields a significant performance boost. Since we combine region proposals with CNNs, we call our method R-CNN: Regions with CNN features. We also present experiments that provide insight into what the network learns, revealing a rich hierarchy of image features. Source code for the complete system is available at http://www. cs. berkeley. edu/~ rbg/rcnn.
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