Information and Communication Engineering, Anna University, Chennai, India.
Department of ECE, Infant Jesus College of Engineering, ANNA University, Chennai, India.
Biomed Phys Eng Express. 2021 Jul 14;7(5). doi: 10.1088/2057-1976/ac0ccc.
Magnetic Resonance Imaging (MRI) inputs are most noticeable in diagnosing brain tumors via computer and manual clinical understanding. Multi-level detection and classification of the images utilizing computer-aided processing depend on labels and annotations. Though the two processes are dynamic and time-consuming, without which the precise accuracy is less assured. For augmenting the accuracy in processing un-labeled or annotation-less images, this article introduces Absolute Classification-Detection Model (AC-DM). This model uses a conventional neural network for training the morphological variations proficient of achieving label-less classification and tumor detection. The traditional neural network trains the images based on differential lattice morphology for classification and detection. In this process, training for the lattices and their corresponding gradients is validated to improve the precision of the regional analysis. This helps to retain the precision of identifying tumors. The variations are recognized for their lattice mapping in the detected boundaries of the input image. The detected boundaries help to map accurate lattices for adapting morphological transforms. Thus, the partial and complex processing in detecting tumors is restrained in the suggested model, adapting to the classification. The efficiency of the suggested model is verified utilizing accuracy, precision, sensitivity, and classification time.
磁共振成像(MRI)输入在通过计算机和手动临床理解诊断脑瘤方面最为明显。利用计算机辅助处理对图像进行多层次检测和分类依赖于标签和注释。尽管这两个过程是动态和耗时的,但没有它们,精确性就无法得到保证。为了提高处理未标记或无注释图像的准确性,本文引入了绝对分类-检测模型(AC-DM)。该模型使用传统的神经网络来训练形态变化,使其能够实现无标签分类和肿瘤检测。传统的神经网络根据微分格子形态对图像进行训练,以进行分类和检测。在这个过程中,验证了格子及其相应梯度的训练,以提高区域分析的精度。这有助于保持识别肿瘤的精度。通过在输入图像的检测边界中对格子进行映射来识别变化。检测边界有助于为适应形态变换映射准确的格子。因此,在建议的模型中,通过适应分类来限制检测肿瘤中的局部和复杂处理。利用准确性、精度、灵敏度和分类时间验证了所建议模型的效率。