什么会让人微笑?深度神经网络的观点

Ivan Cík, Andrinandrasana David Rasamoelina, M. Mach, P. Sinčák
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引用次数: 0

摘要

人工智能是各种问题的主流解决方案,由于硬件的发展,它有可能实现前所未有的性能。持续的数据收集为我们提供了创建各种数据集的机会,这些数据集是各种挑战的基础。其中一个挑战是从人类的面部表情中识别情绪。目前存在多个深度学习模型来解决这样的任务。它们总是在各自的验证和测试集上产生很高的准确性。然而,这种模型的性能在实际图像上使用时往往会下降。这项工作深入了解了这种深度学习模型如何从训练数据中存在的偏见中预测面部表情。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
What makes a smile? A Deep Neural Network Point of View
Artificial intelligence is the mainstream solution to various problems, and thanks to developments in hardware, it is possible to achieve performance like never before. Continuous data collection provides us with opportunities for the creation of various datasets, which are the basis for various challenges. One of those challenges is recognizing emotions from humans' facial expressions. Multiple deep learning models exist in the wild to solve such a task. They always yield high accuracy on their respective validation and test set. However, the performance of such a model tends to decrease when used on real-world images. This work gives insight into how such a deep learning model can predict facial expression from biases present in training data.
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