题目
PSYC30018_2025_SM1 Mid Semester Test: Neuroscience and the Mind (PSYC30018_2025_SM1) - Requires Respondus LockDown Browser
单项选择题
Which of the following will NOT make deep convolutional neural network (DCNN) face recognition models more like human face processing?
选项
A.Make DCNN models undergo the same kind of learning as human face learning
B.Force DCNN models to encode the same facial features as our brain
C.Constrain DCNN models to use the same computational steps between layers
D.Develop DCNN models with a much larger number of hidden layers
查看解析
标准答案
Please login to view
思路分析
When evaluating which choice will NOT make DCNN face recognition resemble human face processing, I will assess each option on how closely it aligns with principles of human-like processing vs. technical optimization.
Option 1: 'Make DCNN models undergo the same kind of learning as human face learning' If a DCNN were trained under learning paradigms that mirror human developmental progression, supervision, and experiential exposure, it could push the ......Login to view full explanation登录即可查看完整答案
我们收录了全球超50000道考试原题与详细解析,现在登录,立即获得答案。
类似问题
Which of the following Neural Networks is used in Machine Vision system?
哪一项陈述正确描述了卷积神经网络 (CNN) 在识别中的特征? Which statement describes a characteristic of the Convolutional Neural Network (CNN) in recognition correctly?
Question23 Which of the following statements is/are CORRECT about a convolutional layer? (you can chose more than one) The number of weights depends on the depth of the input volume The total number of parameters depends on the padding The total number of parameters depends on the stride The number of biases is equal to the number of filters ResetMaximum marks: 1.5 Flag question undefined
This is the CNN Architecture diagram that was explained in lectures. Match A, B, C, D, and E to the correct labels below. Note: Full marks will only be awarded for getting all matches correct here. You must make selections in all drop down lists in order for this question to be counted.
更多留学生实用工具
希望你的学习变得更简单
加入我们,立即解锁 海量真题 与 独家解析,让复习快人一步!