The impact of convolution neural networks (CNNs) in the supervised settings provided tremendous increment in performance. The representations learned from CNN's operated on hyperspherical manifold led to insightful outcomes in face recognition, face identification, and other supervised tasks. A broad range of activation functions were developed with hypersphere intuition which performs superior to softmax in euclidean space. The main motive of this research is to provide insights. First, the stereographic projection is implied to transform data from Euclidean space ($\mathbb{R}^{n}$) to hyperspherical manifold ($\mathbb{S}^{n}$) to analyze the performance of angular margin losses. Secondly, proving theoretically and practically that decision boundaries constructed on hypersphere using stereographic projection obliges the learning of neural networks. Experiments have demonstrated that applying stereographic projection on existing state-of-the-art angular margin objective functions improved performance for standard image classification data sets (CIFAR-10,100). Further, we ran our experiments on malaria-thin blood smear images, resulting in effective outcomes. The code is publicly available at:https://github.com/barulalithb/stereo-angular-margin.
翻译:从CNN的超球体操作中获得的演示结果在面部识别、面部识别和其他受监督的任务方面产生了深刻的结果。第二,从理论上和实际上证明,在超球体上建造的超球体决定界限是使用神经网络学习所必需的。实验表明,对现有的州-州-州-州-州-州间边距目标功能应用石图预测提高了标准图像分类数据集的性能(CIFAR-10-1100)。此外,我们进行了疟疾-地区血压图像实验,结果产生了有效的结果。