Ultrafast Image Categorization in Biology and Neural Models
Jean-Nicolas J\'er\'emie, Laurent U Perrinet

TL;DR
This study retrains a CNN on ecologically relevant tasks, achieving human-like rapid image categorization, robustness to transformations, and demonstrating that shallow networks can perform efficiently in biological and artificial vision tasks.
Contribution
It demonstrates that a shallow CNN can match human performance in ecologically relevant image categorization tasks and reproduces human-like robustness to transformations.
Findings
CNN achieves human-like accuracy in animal detection.
Combining model outputs improves categorization performance.
Shallow networks suffice for ultrafast, robust image recognition.
Abstract
Humans are able to categorize images very efficiently, in particular to detect the presence of an animal very quickly. Recently, deep learning algorithms based on convolutional neural networks (CNNs) have achieved higher than human accuracy for a wide range of visual categorization tasks. However, the tasks on which these artificial networks are typically trained and evaluated tend to be highly specialized and do not generalize well, e.g., accuracy drops after image rotation. In this respect, biological visual systems are more flexible and efficient than artificial systems for more general tasks, such as recognizing an animal. To further the comparison between biological and artificial neural networks, we re-trained the standard VGG 16 CNN on two independent tasks that are ecologically relevant to humans: detecting the presence of an animal or an artifact. We show that re-training the…
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Taxonomy
TopicsImage Processing Techniques and Applications · Cell Image Analysis Techniques · Infrared Target Detection Methodologies
MethodsTanh Activation · Sigmoid Activation · Long Short-Term Memory · AutoAugment · Max Pooling · Dense Connections · Convolution · Dropout · Softmax
