The aim of the study is to apply and compare the performance of two different types of neural networks on the Quick, Draw! dataset and from this determine whether interpreting the sketches as sequences gives a higher accuracy than interpreting them as pixels. The two types of networks constructed were a recurrent neural network (RNN) and a convolutional neural network (CNN). The networks were optimised and the final architectures included five layers. The final evaluation accuracy achieved was 94.2% and 92.3% respectively, leading to the conclusion that the sequential interpretation of the Quick, Draw! dataset is favourable
Nowadays, visual encoding models use convolution neural networks (CNNs) with outstanding performance...
We develop a precise writing survey on sequence-to-sequence learning with neural network and its mod...
Sketching is a simple and efficient way for humans to express their perceptions of the world. Sketch...
The aim of the study is to apply and compare the performance of two different types of neural networ...
2nd International Congress on Human-Computer Interaction, Optimization and Robotic Applications (HOR...
Sketching is a universal communication tool that, despite its simplicity, is able to efficiently exp...
Šī darba mērķis ir iepazīties un izvērtēt esošos zīmētu attēlu klasificēšanas rīkus uz sakropļotiem...
Sketching has been used by humans to visualize and narrate the aesthetics of the world for a long ti...
We propose a deep learning approach to free-hand sketch recognition that achieves state-of-the-art p...
We propose a multi-scale multi-channel deep neural network framework that, for the first time, yield...
Sketch recognition relies on two types of information, namely, spatial contexts like the local struc...
Sketch drawings play an important role in assisting humans in communication and creative design sinc...
Hand-drawn sketches are powerful cognitive devices for the efficient exploration, visualization and ...
Sketch is a special group of images, and the ability to recognize sketches is of great importance fo...
Line drawings convey meaning with just a few strokes. Despite strong simplifications, humans can rec...
Nowadays, visual encoding models use convolution neural networks (CNNs) with outstanding performance...
We develop a precise writing survey on sequence-to-sequence learning with neural network and its mod...
Sketching is a simple and efficient way for humans to express their perceptions of the world. Sketch...
The aim of the study is to apply and compare the performance of two different types of neural networ...
2nd International Congress on Human-Computer Interaction, Optimization and Robotic Applications (HOR...
Sketching is a universal communication tool that, despite its simplicity, is able to efficiently exp...
Šī darba mērķis ir iepazīties un izvērtēt esošos zīmētu attēlu klasificēšanas rīkus uz sakropļotiem...
Sketching has been used by humans to visualize and narrate the aesthetics of the world for a long ti...
We propose a deep learning approach to free-hand sketch recognition that achieves state-of-the-art p...
We propose a multi-scale multi-channel deep neural network framework that, for the first time, yield...
Sketch recognition relies on two types of information, namely, spatial contexts like the local struc...
Sketch drawings play an important role in assisting humans in communication and creative design sinc...
Hand-drawn sketches are powerful cognitive devices for the efficient exploration, visualization and ...
Sketch is a special group of images, and the ability to recognize sketches is of great importance fo...
Line drawings convey meaning with just a few strokes. Despite strong simplifications, humans can rec...
Nowadays, visual encoding models use convolution neural networks (CNNs) with outstanding performance...
We develop a precise writing survey on sequence-to-sequence learning with neural network and its mod...
Sketching is a simple and efficient way for humans to express their perceptions of the world. Sketch...