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Mask-GradCAM: Object Identification and Localization of Visual Presentation for Deep Convolutional Network

机译:Mask-GradCam:深度卷积网络的视觉演示的对象识别和本地化

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This paper presents the conceptually simple, flexible and more suitable framework to demonstrate object localization and object recognition by Mask RCNN along with Grad-CAM (Mask-GradCAM) method that is mainly used to build framework to provide the better visual identification. Because Mask RCNN based method provides a function that take array of pixel values for load the images and aspects of the prediction dictionary such that all class labels, scores, bounding boxes and will plot the image with all these annotations. However, applying this method along with Mask RCNN raises significant challenges such that image pixel issues and quality breaking while producing the heat map. Therefore, this entire system is mentioned as Mask-Grad CAM. This research work considers GradCAM++ and GradCAM methods as basic functionality derivation to implement the Mask-GradCAM. In this combination of MaskRCNN along with Grad-CAM provide the fine-grained display to generate higher resolution visual representation. Hence this method is presented as Mask-GradCAM.
机译:本文介绍了概念简单,灵活,更合适的框架,用于通过掩模RCNN展示对象本地化和对象识别以及主要用于构建框架以提供更好的视觉识别的方法来提供曲线凸轮(掩模-GRACTCAM)方法。由于基于掩模RCNN的方法提供了一种函数,用于加载预测字典的图像和方面的像素值阵列,从而使所有类标签,分数,边界框绘制到所有这些注释。然而,应用该方法以及掩模RCNN提高了显着的挑战,使得图像像素问题和在产生热图的同时进行质量断裂。因此,这一整个系统被称为掩模渐变凸轮。本研究工作将Gradcam ++和Gradcam方法视为实现Mask-Gragcam的基本功能派生。在这种掩码的组合中以及GRAC-CAM提供细粒度显示器以产生更高分辨率的视觉表示。因此,该方法被呈现为掩模 - 普拉米。

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