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Purposive Learning01:22

Purposive Learning

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E. C. Tolman emphasized the purposiveness of behavior — the idea that much of our behavior is goal-directed. For instance, employees who aim for a promotion work diligently to meet their targets. Tolman argued that when classical conditioning and operant conditioning occur, the organism acquires certain expectations. In classical conditioning, a child might fear a dog because they expect it to bite. In operant conditioning, a person might consistently work overtime because they expect a...
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Updated: Jun 6, 2025

Quantifying Learning in Young Infants: Tracking Leg Actions During a Discovery-learning Task
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Multilevel semantic and adaptive actionness learning for weakly supervised temporal action localization.

Zhilin Li1, Zilei Wang1, Cerui Dong1

  • 1National Engineering Laboratory for Brain-inspired Intelligence Technology and Application (NEL-BITA), University of Science and Technology of China, Hefei, 230026, China.

Neural Networks : the Official Journal of the International Neural Network Society
|November 24, 2024
PubMed
Summary
This summary is machine-generated.

This study introduces the Multilevel Semantic and Adaptive Actionness Learning Network (SAL) for weakly supervised temporal action localization. SAL improves action classification and localization by learning fine-grained video semantics and using adaptive pseudo-labels.

Keywords:
Action recognitionTemporal action localizationWeakly supervised learning

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Area of Science:

  • Computer Vision
  • Machine Learning
  • Artificial Intelligence

Background:

  • Weakly supervised temporal action localization (WS-TAL) identifies actions in videos using only video-level labels.
  • Existing WS-TAL methods often use multiple instance learning with top-K segment selection, limiting fine-grained information capture.
  • This leads to suboptimal action classification and localization performance.

Purpose of the Study:

  • To propose a novel network, the Multilevel Semantic and Adaptive Actionness Learning Network (SAL), for improved WS-TAL.
  • To enhance the learning of fine-grained video semantics and actionness for better localization and classification.
  • To address the limitations of current WS-TAL methods in utilizing video information.

Main Methods:

  • The proposed SAL network comprises two branches: Multilevel Semantic Learning (MSL) and Adaptive Actionness Learning (AAL).
  • The MSL branch incorporates second-order video semantics to capture fine-grained details and improve classification, propagating these to action segments.
  • The AAL branch utilizes pseudo-labels with a video segments mix-up strategy and an adaptive actionness mask for stable training and improved generalization.

Main Results:

  • SAL achieves state-of-the-art performance on three benchmark datasets for weakly supervised temporal action localization.
  • The MSL branch effectively captures fine-grained video information, enhancing action classification.
  • The AAL branch improves the generalization ability and training stability through adaptive pseudo-labeling.

Conclusions:

  • The SAL network offers a significant advancement in weakly supervised temporal action localization.
  • The integration of multilevel semantics and adaptive actionness learning effectively addresses limitations in prior WS-TAL approaches.
  • SAL demonstrates superior performance, setting a new state-of-the-art on established benchmarks.