School of Anyang Institute of Technology, Anyang, Henan 455000, China.
Anyang Institute of Technology, School of Art and Design, Anyang, Henan 455000, China.
Comput Intell Neurosci. 2022 Aug 9;2022:1665021. doi: 10.1155/2022/1665021. eCollection 2022.
With the homogenization of product function and performance, the design technology for product appearance quality has been increasingly valued by academia and industry and has become an effective technical way to meet the continuously growing diversified and personalized needs of consumers. The appearance quality attribute of a product can be characterized or described by its appearance image. Data-driven product appearance image design is based on the quantitative data of product appearance and consumer emotional needs and completes the product appearance through computer-aided design technology and intelligent algorithms. Design innovation can help companies quickly respond to consumers' emotional needs and effectively improve design quality and product competitiveness. When visual objects are disturbed in complex scenes, the issues such as how the human brain coordinates multisensory information processing and what neural processing mechanisms follow are still unclear. In this paper, a visual object recognition experiment in a complex scene was designed and the brain activation signals of three modalities of noise, added audio-visual (AVd), single visual noise and noise (Vd), and single-audio (A), were recorded. The properties and neural processing mechanisms of multisensory modulation of auditory stimuli during noisy image recognition were explored. Using the conjunction method combined with the classic "max criterion" rule, it was found that only when a certain amount of noise was added to the visual stimulus, the integration area changed. The product appearance has a decisive influence on the user's product perceptual attribute preference and greatly affects the consumer's satisfaction. The importance of product appearance image design is increasingly prominent. In addition, pattern analysis of brain activation signals confirmed that semantically consistent sounds can facilitate the recognition of noisy images and this facilitation shows a certain category selectivity when subdivided into categories. Using the analysis method of functional connectivity, a functional connectivity network containing nodes at different integration levels was constructed to explore the overall characteristics and processing patterns of the multisensory network. Through the analysis of the network connection relationship, it is found that the prefrontal cortex, STS, and lateral occipital lobe are the nodes with more aggregation in the network, and their functions are similar to the hub in the network. The brain functional network was constructed, and functional connectivity was used to explore the connection characteristics of the network and the multisensory modulation mechanism between different processing levels of the brain.
随着产品功能和性能的同质化,产品外观质量设计技术越来越受到学术界和工业界的重视,成为满足消费者不断增长的多样化和个性化需求的有效技术途径。产品的外观质量属性可以通过其外观形象来描述或描述。基于产品外观和消费者情感需求的定量数据,通过计算机辅助设计技术和智能算法完成产品外观设计。数据驱动的产品外观形象设计可以帮助公司快速响应消费者的情感需求,有效提高设计质量和产品竞争力。当视觉物体在复杂场景中受到干扰时,大脑如何协调多感官信息处理以及遵循什么神经处理机制等问题仍然不清楚。在本文中,设计了一个复杂场景中的视觉物体识别实验,记录了三种模态的噪声、添加视听(AVd)、单一视觉噪声和噪声(Vd)以及单一音频(A)的大脑激活信号。探索了噪声图像识别过程中听觉刺激的多感官调制的性质和神经处理机制。使用结合经典“最大准则”规则的结合方法,发现只有当视觉刺激中加入一定量的噪声时,整合区域才会发生变化。产品外观对用户产品感知属性偏好有决定性影响,极大地影响消费者的满意度。产品外观形象设计的重要性日益突出。此外,大脑激活信号的模式分析证实,语义一致的声音可以促进噪声图像的识别,并且这种促进作用在细分到类别时表现出一定的类别选择性。使用功能连接分析方法,构建了一个包含不同集成水平节点的功能连接网络,以探索多感官网络的整体特征和处理模式。通过对网络连接关系的分析,发现前额叶皮层、STS 和外侧枕叶是网络中聚集较多的节点,其功能类似于网络中的枢纽。构建了大脑功能网络,利用功能连接探讨了网络的连接特征和大脑不同处理水平之间的多感官调制机制。