模式识别与人工智能
模式識彆與人工智能
모식식별여인공지능
Moshi Shibie yu Rengong Zhineng
2014年
4期
345-355
,共11页
图像分类%空间金字塔%集成%多特征组合%稀疏编码
圖像分類%空間金字塔%集成%多特徵組閤%稀疏編碼
도상분류%공간금자탑%집성%다특정조합%희소편마
Image Classification%Spatial Pyramid%Integration%Multi-feature Combination%Sparse Coding
采用单一特征时存在提取信息量不足、对图像内容描述较片面等问题,单一编码方法在组织特征向量时也会对图像造成过多的信息丢失。针对这些问题,文中提出一种集成多特征与稀疏编码方法。首先,对图像进行空间金字塔划分,结合尺度不变特征和梯度方向直方图特征之间的优势互补性,提取得到不同的特征集。然后,在不同的特征集上用不同的聚类方法得到不同的视觉词汇本,在每个词汇本上分别进行局部稀疏编码和稀疏编码,得到不同的图像描述集。最后,利用线性SVM进行图像分类,并对得到的多个结果采用投票决策方法决定最终分类情况。实验表明文中方法有良好的准确性和鲁棒性。
採用單一特徵時存在提取信息量不足、對圖像內容描述較片麵等問題,單一編碼方法在組織特徵嚮量時也會對圖像造成過多的信息丟失。針對這些問題,文中提齣一種集成多特徵與稀疏編碼方法。首先,對圖像進行空間金字塔劃分,結閤呎度不變特徵和梯度方嚮直方圖特徵之間的優勢互補性,提取得到不同的特徵集。然後,在不同的特徵集上用不同的聚類方法得到不同的視覺詞彙本,在每箇詞彙本上分彆進行跼部稀疏編碼和稀疏編碼,得到不同的圖像描述集。最後,利用線性SVM進行圖像分類,併對得到的多箇結果採用投票決策方法決定最終分類情況。實驗錶明文中方法有良好的準確性和魯棒性。
채용단일특정시존재제취신식량불족、대도상내용묘술교편면등문제,단일편마방법재조직특정향량시야회대도상조성과다적신식주실。침대저사문제,문중제출일충집성다특정여희소편마방법。수선,대도상진행공간금자탑화분,결합척도불변특정화제도방향직방도특정지간적우세호보성,제취득도불동적특정집。연후,재불동적특정집상용불동적취류방법득도불동적시각사회본,재매개사회본상분별진행국부희소편마화희소편마,득도불동적도상묘술집。최후,이용선성SVM진행도상분류,병대득도적다개결과채용투표결책방법결정최종분류정황。실험표명문중방법유량호적준학성화로봉성。
Using a single image feature to describe the image content is one-sided because of the insufficient information. Besides, the single coding method usually loses the spatial information. To solve these problems, an approach of integrating multi-features and sparse coding methods is proposed. Images are firstly divided into sub regions according to the spatial pyramid, and then the complementary advantages of scale invariant feature transform and the histogram of oriented gradients features are combined to produce various feature sets. Then, different clustering methods are used on different feature sets to acquire different codebooks. Next, two sparse coding methods, locality constrained linear coding and sparse coding based on each codebook are further employed respectively to get various image description sets. Finally, linear support vector machines are applied to image classification, and a voting method is used to determine the final classification. Experimental results show that the proposed method has good accuracy and robustness compared with some state-of-the-art methods.