Laboratory of Cognitive Model and Algorithm, Department of Computer Science, Fudan University, No. 825 Zhangheng Road, Shanghai, 201203, China; Shanghai Key Laboratory of Data Science, No. 220 Handan Road, Shanghai, 200433, China.
Laboratory of Cognitive Model and Algorithm, Department of Computer Science, Fudan University, No. 825 Zhangheng Road, Shanghai, 201203, China.
Neural Netw. 2018 Jan;97:46-61. doi: 10.1016/j.neunet.2017.09.010. Epub 2017 Sep 28.
Cortical area V4 lies in the middle of the visual pathway involved with object recognition. Neurons in V4 selectively respond to different curve fragments along the object contour. In this paper, we propose a computational model that captures the shape features extracted by V4 neurons. The computational model emulated the information processing mechanism in the visual cortex. It extracted curve segments that V4 neurons respond to and quantitatively represented features of the curve segments. The proposed V4 shape features could describe object contours accurately and efficiently. With quantitative evaluation using the MPEG7 shape dataset, we showed that complex shapes could be represented with a very limited number of V4 shape features. Based on V4 features, we further developed a self-organizing map neural network to learn object shape models. The shape model was defined by a group of V4 features with constraints on their spatial relationships. The model was evaluated in object detection experiments using ETHZ objects and INRIA horses datasets. The proposed model could learn to recognize objects by shapes and accurately outline the object contour in the images. Thus, this model provides insight into the neural mechanisms of shape-based object recognition.
V4 脑区位于与目标识别相关的视觉通路的中间。V4 中的神经元选择性地对目标轮廓上的不同曲线片段做出反应。在本文中,我们提出了一个计算模型,该模型捕捉了 V4 神经元提取的形状特征。该计算模型模拟了视觉皮层中的信息处理机制。它提取了 V4 神经元反应的曲线段,并对曲线段的特征进行了定量表示。所提出的 V4 形状特征可以准确高效地描述目标轮廓。使用 MPEG7 形状数据集进行定量评估表明,复杂的形状可以用非常有限数量的 V4 形状特征来表示。基于 V4 特征,我们进一步开发了一个自组织映射神经网络来学习目标形状模型。形状模型由一组 V4 特征定义,并对其空间关系进行约束。该模型在 ETHZ 物体和 INRIA 马数据集的物体检测实验中进行了评估。所提出的模型可以通过形状学习识别物体,并准确地勾勒出图像中的物体轮廓。因此,该模型为基于形状的物体识别的神经机制提供了深入的了解。