Energy-Efficient Object Detection using Semantic Decomposition
Priyadarshini Panda, Swagath Venkataramani, Abhronil Sengupta, Anand, Raghunathan, Kaushik Roy

TL;DR
This paper introduces a hierarchical classification framework that leverages semantic features like color and texture to improve energy efficiency in object detection, significantly reducing computational effort and energy consumption.
Contribution
The paper proposes a novel two-stage hierarchical classification approach using semantic features to reduce energy consumption in object detection tasks.
Findings
Achieved 1.93x energy improvement on Caltech101 dataset.
Achieved 1.46x energy improvement on CIFAR10 dataset.
Reduced computational effort by rejecting non-relevant inputs early.
Abstract
Machine-learning algorithms offer immense possibilities in the development of several cognitive applications. In fact, large scale machine-learning classifiers now represent the state-of-the-art in a wide range of object detection/classification problems. However, the network complexities of large-scale classifiers present them as one of the most challenging and energy intensive workloads across the computing spectrum. In this paper, we present a new approach to optimize energy efficiency of object detection tasks using semantic decomposition to build a hierarchical classification framework. We observe that certain semantic information like color/texture are common across various images in real-world datasets for object detection applications. We exploit these common semantic features to distinguish the objects of interest from the remaining inputs (non-objects of interest) in a dataset…
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