Active Object Detection with Knowledge Aggregation and Distillation from Large Models
Accurately detecting active objects undergoing state changes is essential for comprehending human interactions and facilitating decision-making. The existing methods for active object detection (AOD) primarily rely on visual appearance of the objects within input, such as changes in size, shape and...
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Zusammenfassung: | Accurately detecting active objects undergoing state changes is essential for
comprehending human interactions and facilitating decision-making. The existing
methods for active object detection (AOD) primarily rely on visual appearance
of the objects within input, such as changes in size, shape and relationship
with hands. However, these visual changes can be subtle, posing challenges,
particularly in scenarios with multiple distracting no-change instances of the
same category. We observe that the state changes are often the result of an
interaction being performed upon the object, thus propose to use informed
priors about object related plausible interactions (including semantics and
visual appearance) to provide more reliable cues for AOD. Specifically, we
propose a knowledge aggregation procedure to integrate the aforementioned
informed priors into oracle queries within the teacher decoder, offering more
object affordance commonsense to locate the active object. To streamline the
inference process and reduce extra knowledge inputs, we propose a knowledge
distillation approach that encourages the student decoder to mimic the
detection capabilities of the teacher decoder using the oracle query by
replicating its predictions and attention. Our proposed framework achieves
state-of-the-art performance on four datasets, namely Ego4D, Epic-Kitchens,
MECCANO, and 100DOH, which demonstrates the effectiveness of our approach in
improving AOD. |
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DOI: | 10.48550/arxiv.2405.12509 |