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A Biologically Inspired Neural Network Model to Transformation Invariant Object Recognition

机译:一种生物学启发的神经网络模型,转换不变对象识别

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Transformation invariant image recognition has been an active research area due to its widespread applications in a variety of fields such as military operations, robotics, medical practices, geographic scene analysis, and many others. The primary goal for this research is detection of objects in the presence of image transformations such as changes in resolution, rotation, translation, scale and occlusion. We investigate a biologically-inspired neural network (NN) model for such transformation-invariant object recognition. In a classical training-testing setup for NN, the performance is largely dependent on the range of transformation or orientation involved in training. However, an even more serious dilemma is that there may not be enough training data available for successful learning or even no training data at all. To alleviate this problem, a biologically inspired reinforcement learning (RL) approach is proposed. In this paper, the RL approach is explored for object recognition with different types of transformations such as changes in scale, size, resolution and rotation. The RL is implemented in an adaptive critic design (ACD) framework, which approximates the neuro-dynamic programming of an action network and a critic network, respectively. Two ACD algorithms such as Heuristic Dynamic Programming (HDP) and Dual Heuristic dynamic Programming (DHP) are investigated to obtain transformation invariant object recognition. The two learning algorithms are evaluated statistically using simulated transformations in images as well as with a large-scale UMIST face database with pose variations. In the face database authentication case, the 90° out-of-plane rotation of faces from 20 different subjects in the UMIST database is used. Our simulations show promising results for both designs for transformation-invariant object recognition and authentication of faces. Comparing the two algorithms, DHP outperforms HDP in learning capability, as DHP takes fewer steps to perform a successful recognition task in general. Further, the residual critic error in DHP is generally smaller than that of HDP, and DHP achieves a 100% success rate more frequently than HDP for individual objects/subjects. On the other hand, HDP is more robust than the DHP as far as success rate across the database is concerned when applied in a stochastic and uncertain environment, and the computational time involved in DHP is more.
机译:转型不变的图像识别是一个活跃的研究区域,因为它在各种领域的广泛应用程序,如军事行动,机器人,医疗实践,地理场景分析以及许多其他领域。该研究的主要目标是在存在图像转换的情况下检测物体,例如分辨率,旋转,平移,缩放和遮挡的变化。我们研究了这种变换不变对象识别的生物学启发的神经网络(NN)模型。在NN的经典培训测试设置中,性能在很大程度上取决于培训中所涉及的转换或方向的范围。但是,更严重的困境是,可能没有足够的培训数据可用于成功学习甚至没有培训数据。为了减轻这个问题,提出了一种生物学启发的加强学习(RL)方法。在本文中,探索了R1方法,用于对象识别,不同类型的变换,例如规模,大小,分辨率和旋转的变化。 RL在自适应批评设计(ACD)框架中实现,其分别近似于动作网络和批评网络的神经动态编程。调查了两个ACD算法,例如启发式动态编程(HDP)和双发主义动态编程(DHP)以获得转换不变对象识别。两个学习算法在统计上使用图像中的模拟变换以及具有姿势变化的大规模umist面部数据库进行统计评估。在面部数据库认证情况下,使用来自UMICT数据库中的20个不同对象的面孔的90°外平面旋转。我们的模拟显示了对变换不变对象识别和面孔认证的设计的有希望的结果。比较这两个算法,DHP在学习能力中优于HDP,因为DHP需要更少的步骤来执行成功的识别任务。此外,DHP中的残余评论误差通常小于HDP的误差,DHP比单个对象/受试者的HDP更频繁地实现100%的成功率。另一方面,只要在随机和不确定环境中涉及数据库的成功率,HDP比DHP更强大,并且在随机和不确定的环境中涉及数据库,并且DHP中涉及的计算时间更多。

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