Abstract—Unconstrained video recognition and Deep Convo-lution Network (DCN) are two active topics in computer vision recently. In this work, we apply DCNs as frame-based recognizers for video recognition. Our preliminary studies, however, show that video corpora with complete ground truth are usually not large and diverse enough to learn a robust model. The networks trained directly on the video data set suffer from significant overfitting and have poor recognition rate on the test set. The same lack-of-training-sample problem limits the usage of deep models on a wide range of computer vision problems where obtaining training data are difficult. To overcome the problem, we perform transfer learning from images to videos to utilize the know...
Convolutional neural networks (CNN) have recently shown outstanding image classification performance...
Video understanding is one of the fundamental problems in computer vision. Videos provide more infor...
Evidence is mounting that CNNs are currently the most efficient and successful way to learn visual r...
Object recognition is important to understand the content of video and allow flexible querying in a ...
Evidence is mounting that ConvNets are the best representation learning method for recognition. In t...
We investigate architectures of discriminatively trained deep Convolutional Networks (ConvNets) for ...
Deep learning has resulted in ground-breaking progress in a variety of domains, from core machine le...
Deep (machine) learning in recent years has significantly increased the predictive modeling strength...
Abstract Convolutional neural networks (CNN) have recently shown outstanding image classification pe...
The rapid progress in visual recognition capabilities over the past several years can be attributed ...
Visual recognition is a problem of significant interest in computer vision. The current solution to ...
Deep learning has achieved tremendous success on various computer vision tasks. However, deep learni...
The recent rise in machine learning has been largely made possible by novel algorithms, such as con...
Image representation is a key component in visual recognition systems. In visual recognition problem...
Transferring knowledge from task-agnostic pre-trained deep models for downstream tasks is an importa...
Convolutional neural networks (CNN) have recently shown outstanding image classification performance...
Video understanding is one of the fundamental problems in computer vision. Videos provide more infor...
Evidence is mounting that CNNs are currently the most efficient and successful way to learn visual r...
Object recognition is important to understand the content of video and allow flexible querying in a ...
Evidence is mounting that ConvNets are the best representation learning method for recognition. In t...
We investigate architectures of discriminatively trained deep Convolutional Networks (ConvNets) for ...
Deep learning has resulted in ground-breaking progress in a variety of domains, from core machine le...
Deep (machine) learning in recent years has significantly increased the predictive modeling strength...
Abstract Convolutional neural networks (CNN) have recently shown outstanding image classification pe...
The rapid progress in visual recognition capabilities over the past several years can be attributed ...
Visual recognition is a problem of significant interest in computer vision. The current solution to ...
Deep learning has achieved tremendous success on various computer vision tasks. However, deep learni...
The recent rise in machine learning has been largely made possible by novel algorithms, such as con...
Image representation is a key component in visual recognition systems. In visual recognition problem...
Transferring knowledge from task-agnostic pre-trained deep models for downstream tasks is an importa...
Convolutional neural networks (CNN) have recently shown outstanding image classification performance...
Video understanding is one of the fundamental problems in computer vision. Videos provide more infor...
Evidence is mounting that CNNs are currently the most efficient and successful way to learn visual r...