Machine Vision and Medical Image Processing (MVMIP) Laboratory, Faculty of Electrical and Computer Engineering, K.N. Toosi University of Technology, Tehran, Iran.
Machine Vision and Medical Image Processing (MVMIP) Laboratory, Faculty of Electrical and Computer Engineering, K.N. Toosi University of Technology, Tehran, Iran; Center for International Scientific Studies and Collaboration (CISSC), Tehran, Iran.
Neural Netw. 2022 Jul;151:121-131. doi: 10.1016/j.neunet.2022.03.026. Epub 2022 Mar 29.
Despite considerable progress in the field of automatic multi-target tracking, several problems such as data association remained challenging. On the other hand, cognitive studies have reported that humans can robustly track several objects simultaneously. Such circumstances happen regularly in daily life, and humans have evolved to handle the associated problems. Accordingly, using brain-inspired processing principles may contribute to significantly increase the performance of automatic systems able to follow the trajectories of multiple objects. In this paper, we propose a multiple-object tracking algorithm based on dynamic neural field theory which has been proven to provide neuro-plausible processing mechanisms for cognitive functions of the brain. We define several input neural fields responsible for representing previous location and orientation information as well as instantaneous linear and angular speed of the objects in successive video frames. Image processing techniques are applied to extract the critical object features including target location and orientation. Two prediction fields anticipate the objects' locations and orientations in the upcoming frame after receiving excitatory and inhibitory inputs from the input fields in a feed-forward architecture. This information is used in the data association and labeling process. We tested the proposed algorithm on a zebrafish larvae segmentation and tracking dataset and an ant-tracking dataset containing non-rigid objects with spiky movements and frequently occurring occlusions. The results showed a significant improvement in tracking metrics compared to state-of-the-art algorithms.
尽管在自动多目标跟踪领域取得了相当大的进展,但数据关联等问题仍然具有挑战性。另一方面,认知研究报告称,人类可以稳健地同时跟踪多个物体。这种情况在日常生活中经常发生,人类已经进化到可以处理相关问题。因此,使用受大脑启发的处理原则可能有助于显著提高能够跟踪多个物体轨迹的自动系统的性能。在本文中,我们提出了一种基于动态神经场理论的多目标跟踪算法,该理论已被证明为大脑认知功能提供了神经似的处理机制。我们定义了几个输入神经场,负责表示物体在连续视频帧中的先前位置和方向信息以及瞬时线性和角速度。图像处理技术用于提取关键目标特征,包括目标位置和方向。两个预测场在收到来自前馈架构中输入场的兴奋和抑制输入后,预测物体在下一帧中的位置和方向。该信息用于数据关联和标记过程。我们在一个包含非刚性物体的斑马鱼幼虫分割和跟踪数据集以及一个蚂蚁跟踪数据集上测试了所提出的算法,该数据集包含具有尖峰运动和频繁遮挡的物体。与最先进的算法相比,跟踪指标显示出了显著的改进。