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Hybrid CNN and Dictionary-Based Models for Scene Recognition and Domain Adaptation
Jul 14, 2017Author:
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Title: Hybrid CNN and Dictionary-Based Models for Scene Recognition and Domain Adaptation

 Authors: Xie, GS; Zhang, XY; Yan, SC; Liu, CL

 Author Full Names: Xie, Guo-Sen; Zhang, Xu-Yao; Yan, Shuicheng; Liu, Cheng-Lin

 Source: IEEE TRANSACTIONS ON CIRCUITS AND SYSTEMS FOR VIDEO TECHNOLOGY, 27 (6):1263-1274; 10.1109/TCSVT.2015.2511543 JUN 2017

 Language: English

 Abstract: Convolutional neural network (CNN) has achieved the state-of-the-art performance in many different visual tasks. Learned from a large-scale training data set, CNN features are much more discriminative and accurate than the handcrafted features. Moreover, CNN features are also transferable among different domains. On the other hand, traditional dictionary-based features (such as BoW and spatial pyramid matching) contain much more local discriminative and structural information, which is implicitly embedded in the images. To further improve the performance, in this paper, we propose to combine CNN with dictionary-based models for scene recognition and visual domain adaptation (DA). Specifically, based on the well-tuned CNN models (e.g., AlexNet and VGG Net), two dictionary-based representations are further constructed, namely, mid-level local representation (MLR) and convolutional Fisher vector (CFV) representation. In MLR, an efficient two-stage clustering method, i.e., weighted spatial and feature space spectral clustering on the parts of a single image followed by clustering all representative parts of all images, is used to generate a class-mixture or a class-specific part dictionary. After that, the part dictionary is used to operate with the multiscale image inputs for generating mid-level representation. In CFV, a multiscale and scale-proportional Gaussian mixture model training strategy is utilized to generate Fisher vectors based on the last convolutional layer of CNN. By integrating the complementary information of MLR, CFV, and the CNN features of the fully connected layer, the state-of-the-art performance can be achieved on scene recognition and DA problems. An interested finding is that our proposed hybrid representation (from VGG net trained on ImageNet) is also complementary to GoogLeNet and/or VGG-11 (trained on Place205) greatly.

 ISSN: 1051-8215

 eISSN: 1558-2205

 IDS Number: EX0GR

 Unique ID: WOS:000402898600009

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