Convolutional neural networks (CNNs) are one of the most popular models of Artificial Neural Networks (ANN)s in Computer Vision (CV). A variety of CNN-based structures were developed by researchers to solve problems like image classification, object detection, and image similarity measurement. Although CNNs have shown their value in most cases, they still have a downside: they easily overfit when there are not enough samples in the dataset. Most medical image datasets are examples of such a dataset. Additionally, many datasets also contain both designed features and images, but CNNs can only deal with images directly. This represents a missed opportunity to leverage additional information. For this reason, we propose a new structure of CNN-based model: CompNet, a composite convolutional neural network. This is a specially designed neural network that accepts combinations of images and designed features as input in order to leverage all available information. The novelty of this structure is that it uses learned features from images to weight designed features in order to gain all information from both images and designed features. With the use of this structure on classification tasks, the results indicate that our approach has the capability to significantly reduce overfitting. Furthermore, we also found several similar approaches proposed by other researchers that can combine images and designed features. To make comparison, we first applied those similar approaches on LIDC and compared the results with the CompNet results, then we applied our CompNet on the datasets that those similar approaches originally used in their works and compared the results with the results they proposed in their papers. All these comparison results showed that our model outperformed those similar approaches on classification tasks either on LIDC dataset or on their proposed datasets.
翻译:计算机视野中人工神经网络(ANN)是最受欢迎的模型之一。 研究人员开发了以CNN为基础的各种结构,以解决图像分类、物体探测和图像相似度测量等问题。 虽然CNN在多数情况下展示了它们的价值,但它们仍然有一个下行:当数据集中没有足够的样本时,它们很容易过度使用。 大多数医学图像数据集是这类数据集的例子。 此外,许多数据集还包含设计过的功能和图像,但CNN只能直接处理图像。这是利用更多信息的错失良机。 为此,我们提出了基于CNN的模型的新结构:CompNet,一个复合革命神经网络。这是一个专门设计的神经网络,接受图像组合和设计特征作为投入,以便利用所有可用信息的输入。这个结构的新颖之处是,它们利用图像和加权设计过的功能来从图像和图像中获取所有信息,但CNNPN只能直接处理图像。这代表了利用更多机会来利用额外信息进行对比。 为此,我们用这些模型来比较了这些模型,我们用这些模型来比较了类似的模型,我们用这些模型来比较了类似的模型,我们用这些模型来比较了相似的模型, 也把数据功能结合起来了我们用了。 。 。 。我们用这些模型的方法可以将数据结合了。 。我们用这些模型的方法,我们用了。我们用了这些模型来将这些模型来比较了。 。 。我们用了我们用在了这些模型来比较了。