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Qian Jiehui
Psychology
Sun Yat-Sen University
Guangdong
Language: English, Chinese
Contact
Cognitive Psychology Cognitive Neuroscience Visual Cognition Behavioral Methods Eeg Erp Computational Modeling Vr Attention Consciousness
Areas of Focus
  • Cognitive Psychology
  • Cognitive Neuroscience
Work Experience
  • 2018-present: Associate Professor, Department of Psychology, Sun Yat-sen University
  • 2013-2017: Lecturer, Department of Psychology, Sun Yat-sen University
Academic Background & Achievements
  • 2009-2013: Ph.D. in Psychology, Northeastern University
Publications
  • Time course of encoding and maintenance of stereoscopically induced size–distance scaling, Guan, W., Li, B., & Qian, J., 2023
  • Top‐down modulation on depth processing: Visual searches for metric and ordinal depth information show a pattern of dissociation, Zhang, K. & Qian, J., 2022
  • Spatial attention based on 2-D location and relative depth order modulates visual working memory in a 3-D environment, Fang, W., Wang, K., Zhang, K., & Qian, J., 2022
  • Contrasting effects of exogenous and endogenous attention on size perception, Han, Y., Tan, Z., Zhuang H. & Qian, J., 2022
  • Increasing perceptual separateness affects working memory for depth – re-allocation of attention from boundaries to the fixated center, Wang, K., Jiang, Z., Huang, S. & Qian, J., 2021
  • Effect of attentional selection on working memory for depth in a retro-cueing paradigm, Li, Z., Tong, M., Chen, S. & Qian, J., 2021
  • Overestimation and contraction biases of depth information stored in working memory depend on spatial configuration, Zhang, K., Gao, DG. & Qian, J., 2021
  • The short-term retention of depth, Reeves, A. & Qian, J., 2021
  • Predicting visual working memory with multimodal magnetic resonance imaging, Xiao, Y., Lin, Y., Ma, J., Qian, J., Ke, Z., Li, L., Yi, Y., Zhang, J. & Dai, Z., 2021
  • Training with high perceptual difficulty improves the capacity and fidelity of internal representation in VWM, Wang, K. & Qian, J., 2020
  • Relation matters: relative depth order is stored in working memory for depth, Qian, J., Li. Z., Zhang, K. & Lei, Q., 2020
  • Exogenous spatial attention shortens perceived depth, Guan, W. & Qian, J., 2020
  • Task-dependent effects of voluntary space-based and involuntary feature-based attention on visual working memory, Qian, J., Zhang, K., Lei, Q., Han, Y. & Li, W., 2020
  • Working memory for stereoscopic depth is limited and imprecise—evidence from a change detection task, Qian, J. & Zhang, K., 2019
  • The transition from feature to object: storage unit in visual working memory depends on task difficulty, Qian, J., Zhang, K., Liu. S. & Lei, Q., 2019
  • Evidence for the beneficial effect of perceptual grouping on visual working memory: an empirical study on illusory contour and a meta-analytic study, Li, J., Qian, J. & Liang, F., 2018
  • Saturation and brightness modulate the effect of depth on visual working memory, Qian, J., Zhang, K., Wang, K., Li, J. & Lei, Q., 2018
  • Effect of color and luminance contrast on size perception -- evidence from a Horizontal parallel lines illusion, Zhang, X., Qian, J., Liang, Q. & Huang, Z., 2018
  • Evidence for the effect of depth on visual working memory, Qian, J., Li, J., Wang, K. & Lei, Q., 2017
  • A depth illusion supports the model of General Object Constancy: size and depth constancies related by a same distance-scaling factor, Qian, J. & Petrov, Y., 2016
  • Perceived distance modulates perceived size of afterimage despite the disappearance of depth cues, Qian, J., Liu, S. & Lei, Q., 2016
  • A neural model of distance-dependent percept of object size constancy, Qian, J. & Yazdanbakhsh, A., 2015
  • Depth perception in the framework of General Object Constancy, Qian, J. & Petrov, Y., 2013
  • VEP correlates of feedback in human cortex, Petrov, Y., Nador, & Qian, J., 2012
  • StarTrek Illusion - General object constancy phenomenon?, Qian, J. & Petrov, Y., 2012
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