عنوان مقاله فارسی: شبکه باور عمیق منظم برای تشخیص ویژگی های تصویر
عنوان مقاله لاتین: Regularized Deep Belief Network for Image Attribute Detection
نویسندگان: Fei Wu; Zhuhao Wang; Weiming Lu; Xi Li; Yi Yang; Jiebo Luo; Yueting Zhuang
تعداد صفحات: 13
سال انتشار: 2017
زبان: لاتین
Abstract:
In general, an image attribute is a human-nameable visual property that has a semantic connotation. Appropriate modeling of the intrinsic contextual correlations among attributes plays a fundamental role in attribute detection. In this paper, we consider image attribute detection from the perspective of regularized deep learning. In particular, we propose a regularized deep belief network (rDBN) to perform the image attribute detection task, which is composed of two parts: 1) a detection DBN (dDBN) that models the joint distribution of images and their corresponding attributes, which acts as an attribute detector and 2) a contextual restricted Boltzmann machine that explicitly models the correlations among attributes acting as a regularizer that restraints the output detection result given by the dDBN to meet the contextual prior of attributes. Furthermore, we propose an efficient fine-tuning scheme that can further optimize the performance of the dDBN by backpropagation. Experimental results show that the proposed rDBN obtains improvements over the state-of-the-art methods for attribute detection on the benchmark data sets.
regularized deep belief network for image attribute detection_1622885496_48844_4145_1221.zip1.20 MB |