Dror I E, Florer F L, Rios D, Zagaeski M
Department of Psychology, Miami University, Oxford, OH 45056, USA.
Biol Cybern. 1996 Apr;74(4):331-8. doi: 10.1007/BF00194925.
Two sets of studies examined the viability of using bat-like sonar input for artificial neural networks in complex pattern recognition tasks. In the first set of studies, a sonar neural network was required to perform two face recognition tasks. In the first task, the network was trained to recognize different faces regardless of facial expressions. Following training, the network was tested on its ability to generalize and correctly recognize faces using echoes of novel facial expressions that were not included in the training set. The neural network was able to recognize novel echoes of faces almost perfectly (above 96% accuracy) when it was required to recognize up to five faces. In the second face recognition task, a sonar neural network was trained to recognize the sex of 16 faces (eight males and eight females). After training, the network was able to correctly recognize novel echoes of those faces as 'male' or as 'female' faces with accuracy levels of 88%. However, the network was not able to recognize novel faces as 'male' or 'female' faces. In the second set of studies, a sonar neural network was required to learn to recognize the speed of a target that was moving towards the viewer. During training, the target was presented in a variety of orientations, and the network's performance was evaluated when the target was presented in novel orientations that were not included in the training set. The different orientations dramatically affected the amplitude and the frequency composition of the echoes. The neural network was able to learn and recognize the speed of a moving target, and to generalize to new orientations of the target. However, the network was not able to generalize to new speeds that were not included in the training set. The potential and limitations of using bat-like sonar as input for artifical neural networks are discussed.
两组研究考察了在复杂模式识别任务中使用类似蝙蝠声纳输入的方式用于人工神经网络的可行性。在第一组研究中,一个声纳神经网络被要求执行两项人脸识别任务。在第一项任务中,该网络被训练识别不同的面部,无论其面部表情如何。训练后,该网络接受测试,以检验其使用训练集中未包含的新面部表情的回声进行泛化并正确识别面部的能力。当需要识别多达五张面部时,该神经网络几乎能完美地识别新的面部回声(准确率超过96%)。在第二项人脸识别任务中,一个声纳神经网络被训练识别16张面部(八名男性和八名女性)的性别。训练后,该网络能够以88%的准确率将这些面部的新回声正确识别为“男性”或“女性”面部。然而,该网络无法将新的面部识别为“男性”或“女性”面部。在第二组研究中,一个声纳神经网络被要求学习识别朝着观察者移动的目标的速度。在训练期间,目标以各种方向呈现,并且当目标以训练集中未包含的新方向呈现时,评估该网络的性能。不同的方向极大地影响了回声的幅度和频率组成。该神经网络能够学习并识别移动目标的速度,并将其推广到目标的新方向。然而,该网络无法推广到训练集中未包含的新速度。文中讨论了使用类似蝙蝠声纳作为人工神经网络输入的潜力和局限性。