Bachmann Talis, Luiga Iiris, Põder Endel
Center for Behavioral and Health Sciences, University of Tartu, Research Group on Perception and Consciousness, Kaarli puiestee 3, 10119 Tallinn, Estonia.
Psychol Res. 2004 Dec;69(1-2):11-21. doi: 10.1007/s00426-003-0161-6. Epub 2003 Dec 24.
The forward masking of faces by spatially quantized masking images was studied. Masks were used in order to exert different types of degrading effects on the early representations in facial information processing. Three types of source images for masks were used: Same-face images (with regard to targets), different-face images, and random Gaussian noise that was spectrally similar to facial images. They were all spatially quantized over the same range of quantization values. Same-face masks had virtually no masking effect at any of the quantization values. Different-face masks had strong masking effects only with fine-scale quantization, but led to the same efficiency of recognition as in the same-face mask condition with the coarsest quantization. Moreover, compared with the noise-mask condition, coarsely quantized different-face masks led to a relatively facilitated level of recognition efficiency. The masking effect of the noise mask did not vary significantly with the coarseness of quantization. The results supported neither a local feature processing account, nor a generalized spatial-frequency processing account, but were consistent with the microgenetic configuration-processing theory of face recognition. Also, the suitability of a spatial quantization technique for image configuration processing research has been demonstrated.
研究了通过空间量化的掩蔽图像对人脸进行前向掩蔽。使用掩蔽是为了对面部信息处理中的早期表征施加不同类型的降解效应。用于掩蔽的源图像有三种类型:同脸图像(相对于目标)、异脸图像和频谱与面部图像相似的随机高斯噪声。它们都在相同的量化值范围内进行空间量化。同脸掩蔽在任何量化值下几乎都没有掩蔽效果。异脸掩蔽仅在精细尺度量化时具有强烈的掩蔽效果,但在最粗量化时与同脸掩蔽条件下的识别效率相同。此外,与噪声掩蔽条件相比,粗量化的异脸掩蔽导致识别效率相对较高。噪声掩蔽的掩蔽效果不会随量化的粗糙程度而显著变化。结果既不支持局部特征处理理论,也不支持广义空间频率处理理论,但与面部识别的微发生配置处理理论一致。此外,还证明了空间量化技术在图像配置处理研究中的适用性。