基于自适应分类的基于神经网络再训练的视频对象发音和跟踪

N. Doulamis, A. Doulamis, K. Ntalianis
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引用次数: 4

摘要

提出了一种自适应神经网络结构,用于立体视频序列的高效分割和跟踪。该方案包括(a)一种使网络权值适应当前条件的再训练算法;(b)用于创建再训练集的语义上有意义的对象提取模块;(c)决策机制,检测新网络再训练的时间实例。该再训练算法通过利用当前条件的信息来优化网络权值,同时使所获得的网络知识最小化。该算法使受线性约束的凸函数最小化,因此存在一个最小值。此外,还包括一个决策机制来检测需要进行新网络再训练的时间实例。通过适当地结合颜色和深度信息的分割融合算法提供了对当前条件的描述。
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Adaptive classification-based articulation and tracking of video objects employing neural network retraining
An adaptive neural network architecture is proposed for efficient video object segmentation and tracking of stereoscopic video sequences. The scheme includes (a) a retraining algorithm for adapting network weights to current conditions; (b) a semantically meaningful object extraction module for creating a retraining set; (c) a decision mechanism, which detects the time instances of a new network retraining. The retraining algorithm optimally adapts network weights by exploiting information of the current conditions and simultaneously minimally degrading the obtained network knowledge. The algorithm results in the minimization of a convex function subject to linear constraints, thus, one minimum exists. Furthermore, a decision mechanism is included to detect the time instances that a new network retraining is required. A description of the current conditions is provided by a segmentation fusion algorithm, which appropriately combines color and depth information.
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