DocumentCode :
3748584
Title :
Learning Deep Object Detectors from 3D Models
Author :
Xingchao Peng;Baochen Sun;Karim Ali;Kate Saenko
Author_Institution :
Univ. of Massachusetts Lowell, Lowell, MA, USA
fYear :
2015
Firstpage :
1278
Lastpage :
1286
Abstract :
Crowdsourced 3D CAD models are easily accessible online, and can potentially generate an infinite number of training images for almost any object category. We show that augmenting the training data of contemporary Deep Convolutional Neural Net (DCNN) models with such synthetic data can be effective, especially when real training data is limited or not well matched to the target domain. Most freely available CAD models capture 3D shape but are often missing other low level cues, such as realistic object texture, pose, or background. In a detailed analysis, we use synthetic CAD images to probe the ability of DCNN to learn without these cues, with surprising findings. In particular, we show that when the DCNN is fine-tuned on the target detection task, it exhibits a large degree of invariance to missing low-level cues, but, when pretrained on generic ImageNet classification, it learns better when the low-level cues are simulated. We show that our synthetic DCNN training approach significantly outperforms previous methods on the benchmark PASCAL VOC2007 dataset when learning in the few-shot scenario and improves performance in a domain shift scenario on the Office benchmark.
Keywords :
"Solid modeling","Three-dimensional displays","Design automation","Image color analysis","Training","Data models","Detectors"
Publisher :
ieee
Conference_Titel :
Computer Vision (ICCV), 2015 IEEE International Conference on
Electronic_ISBN :
2380-7504
Type :
conf
DOI :
10.1109/ICCV.2015.151
Filename :
7410508
Link To Document :
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