论文标题
具有基于GA的特征选择和上下文集成的深度学习模型
Deep Learning Model with GA based Feature Selection and Context Integration
论文作者
论文摘要
深度学习模型在计算机视觉和图像处理应用程序中非常成功。自成立以来,许多用于图像分割的最佳表现方法都是基于深的CNN模型。但是,尽管具有复杂的多层体系结构,但Deep CNN模型仍无法将全球和本地上下文与视觉特征融为一体。我们提出了一种新颖的三层深度学习模型,该模型与视觉特征同化或学习独立的全球和本地上下文信息。提出的模型的新颖性在于,引入了一个基于二进制类的学习者,以学习视觉层中的遗传算法(GA)优化特征,然后是学习图像的全局和局部上下文的上下文层,最后第三层优化所有信息以获得最终的课堂标签。 Stanford背景和Camvid基准图像解析数据集用于我们的模型评估,我们的模型显示出令人鼓舞的结果。经验分析表明,具有全球和局部上下文信息的优化视觉特征在提高准确性并产生与最先进的Deep CNN模型相当的稳定预测中起着重要作用。
Deep learning models have been very successful in computer vision and image processing applications. Since its inception, Many top-performing methods for image segmentation are based on deep CNN models. However, deep CNN models fail to integrate global and local context alongside visual features despite having complex multi-layer architectures. We propose a novel three-layered deep learning model that assiminlate or learns independently global and local contextual information alongside visual features. The novelty of the proposed model is that One-vs-All binary class-based learners are introduced to learn Genetic Algorithm (GA) optimized features in the visual layer, followed by the contextual layer that learns global and local contexts of an image, and finally the third layer integrates all the information optimally to obtain the final class label. Stanford Background and CamVid benchmark image parsing datasets were used for our model evaluation, and our model shows promising results. The empirical analysis reveals that optimized visual features with global and local contextual information play a significant role to improve accuracy and produce stable predictions comparable to state-of-the-art deep CNN models.