Training a neural network is a monolithic endeavor, akin to carving knowledge into stone: once the process is completed, editing the knowledge in a network is nearly impossible, since all information is distributed across the network's weights. We here explore a simple, compelling alternative by marrying the representational power of deep neural networks with the flexibility of a database. Decomposing the task of image classification into image similarity (from a pre-trained embedding) and search (via fast nearest neighbor retrieval from a knowledge database), we build a simple and flexible visual memory that has the following key capabilities: (1.) The ability to flexibly add data across scales: from individual samples all the way to entire classes and billion-scale data; (2.) The ability to remove data through unlearning and memory pruning; (3.) An interpretable decision-mechanism on which we can intervene to control its behavior. Taken together, these capabilities comprehensively demonstrate the benefits of an explicit visual memory. We hope that it might contribute to a conversation on how knowledge should be represented in deep vision models -- beyond carving it in "stone" weights.
Towards flexible perception with visual memory
A visual memory system that combines deep neural networks with databases to offer flexible data addition, removal, and interpretable decision-making, enhancing knowledge representation in visual models.
- Year
- 2024
- Venue
- arXiv 2024
- Authors
- 8
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- Abstract onlyARXIV-DEFAULT
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- Abstract & full text
- arxiv.org/abs/2408.08172v2ARXIV-DEFAULT
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