randomnet
Enhancing CNNs robustness to occlusions with bioinspired filters for border completion
Coutinho, Catarina P., Merhab, Aneeqa, Petkovic, Janko, Zanchetta, Ferdinando, Fioresi, Rita
We exploit the mathematical modeling of the visual cortex mechanism for border completion to define custom filters for CNNs. We see a consistent improvement in performance, particularly in accuracy, when our modified LeNet 5 is tested with occluded MNIST images. Keywords: Convolutional Neural Networks Visual Cortex 1 Introduction Visual perception has evolved as a fundamental tool for living organisms to extract information from their surroundings and adapt their behavior. However, encoding visual information presents several challenges. One major issue is occlusion, i.e. an object's outline is partially hidden by an obstacle.
- Europe > Italy > Emilia-Romagna > Metropolitan City of Bologna > Bologna (0.05)
- North America > United States > California (0.04)
- Europe > Germany > North Rhine-Westphalia > Cologne Region > Bonn (0.04)
RandomNet: Clustering Time Series Using Untrained Deep Neural Networks
Li, Xiaosheng, Xi, Wenjie, Lin, Jessica
Neural networks are widely used in machine learning and data mining. Typically, these networks need to be trained, implying the adjustment of weights (parameters) within the network based on the input data. In this work, we propose a novel approach, RandomNet, that employs untrained deep neural networks to cluster time series. RandomNet uses different sets of random weights to extract diverse representations of time series and then ensembles the clustering relationships derived from these different representations to build the final clustering results. By extracting diverse representations, our model can effectively handle time series with different characteristics. Since all parameters are randomly generated, no training is required during the process. We provide a theoretical analysis of the effectiveness of the method. To validate its performance, we conduct extensive experiments on all of the 128 datasets in the well-known UCR time series archive and perform statistical analysis of the results. These datasets have different sizes, sequence lengths, and they are from diverse fields. The experimental results show that the proposed method is competitive compared with existing state-of-the-art methods.
- North America > United States > Washington > King County > Seattle (0.04)
- North America > United States > Virginia (0.04)
- North America > United States > California > Alameda County > Oakland (0.04)
RandomNet: Towards Fully Automatic Neural Architecture Design for Multimodal Learning
Alletto, Stefano, Huang, Shenyang, Francois-Lavet, Vincent, Nakata, Yohei, Rabusseau, Guillaume
Almost all neural architecture search methods are evaluated in terms of performance (i.e. test accuracy) of the model structures that it finds. Should it be the only metric for a good autoML approach? To examine aspects beyond performance, we propose a set of criteria aimed at evaluating the core of autoML problem: the amount of human intervention required to deploy these methods into real world scenarios. Based on our proposed evaluation checklist, we study the effectiveness of a random search strategy for fully automated multimodal neural architecture search. Compared to traditional methods that rely on manually crafted feature extractors, our method selects each modality from a large search space with minimal human supervision. We show that our proposed random search strategy performs close to the state of the art on the AV-MNIST dataset while meeting the desirable characteristics for a fully automated design process.
- North America > Canada > Quebec > Montreal (0.04)
- Asia > China > Liaoning Province > Shenyang (0.04)